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2 Commits

Author SHA1 Message Date
pablodanswer
25b38212e9 nit 2025-01-19 09:50:35 -08:00
pablodanswer
3096b0b2a7 add linear check 2025-01-19 09:49:26 -08:00
858 changed files with 15686 additions and 46566 deletions

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@@ -11,4 +11,5 @@
Note: You have to check that the action passes, otherwise resolve the conflicts manually and tag the patches.
- [ ] This PR should be backported (make sure to check that the backport attempt succeeds)
- [ ] I have included a link to a Linear ticket in my description.
- [ ] [Optional] Override Linear Check

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@@ -65,11 +65,8 @@ jobs:
NEXT_PUBLIC_POSTHOG_KEY=${{ secrets.POSTHOG_KEY }}
NEXT_PUBLIC_POSTHOG_HOST=${{ secrets.POSTHOG_HOST }}
NEXT_PUBLIC_SENTRY_DSN=${{ secrets.SENTRY_DSN }}
NEXT_PUBLIC_STRIPE_PUBLISHABLE_KEY=${{ secrets.STRIPE_PUBLISHABLE_KEY }}
NEXT_PUBLIC_GTM_ENABLED=true
NEXT_PUBLIC_FORGOT_PASSWORD_ENABLED=true
NEXT_PUBLIC_INCLUDE_ERROR_POPUP_SUPPORT_LINK=true
NODE_OPTIONS=--max-old-space-size=8192
# needed due to weird interactions with the builds for different platforms
no-cache: true
labels: ${{ steps.meta.outputs.labels }}

View File

@@ -12,32 +12,7 @@ env:
BUILDKIT_PROGRESS: plain
jobs:
# 1) Preliminary job to check if the changed files are relevant
check_model_server_changes:
runs-on: ubuntu-latest
outputs:
changed: ${{ steps.check.outputs.changed }}
steps:
- name: Checkout code
uses: actions/checkout@v4
- name: Check if relevant files changed
id: check
run: |
# Default to "false"
echo "changed=false" >> $GITHUB_OUTPUT
# Compare the previous commit (github.event.before) to the current one (github.sha)
# If any file in backend/model_server/** or backend/Dockerfile.model_server is changed,
# set changed=true
if git diff --name-only ${{ github.event.before }} ${{ github.sha }} \
| grep -E '^backend/model_server/|^backend/Dockerfile.model_server'; then
echo "changed=true" >> $GITHUB_OUTPUT
fi
build-amd64:
needs: [check_model_server_changes]
if: needs.check_model_server_changes.outputs.changed == 'true'
runs-on:
[runs-on, runner=8cpu-linux-x64, "run-id=${{ github.run_id }}-amd64"]
steps:
@@ -77,8 +52,6 @@ jobs:
provenance: false
build-arm64:
needs: [check_model_server_changes]
if: needs.check_model_server_changes.outputs.changed == 'true'
runs-on:
[runs-on, runner=8cpu-linux-x64, "run-id=${{ github.run_id }}-arm64"]
steps:
@@ -118,8 +91,7 @@ jobs:
provenance: false
merge-and-scan:
needs: [build-amd64, build-arm64, check_model_server_changes]
if: needs.check_model_server_changes.outputs.changed == 'true'
needs: [build-amd64, build-arm64]
runs-on: ubuntu-latest
steps:
- name: Login to Docker Hub

View File

@@ -60,8 +60,6 @@ jobs:
push: true
build-args: |
ONYX_VERSION=${{ github.ref_name }}
NODE_OPTIONS=--max-old-space-size=8192
# needed due to weird interactions with the builds for different platforms
no-cache: true
labels: ${{ steps.meta.outputs.labels }}

View File

@@ -1,6 +1,6 @@
name: Run Playwright Tests
name: Run Chromatic Tests
concurrency:
group: Run-Playwright-Tests-${{ github.workflow }}-${{ github.head_ref || github.event.workflow_run.head_branch || github.run_id }}
group: Run-Chromatic-Tests-${{ github.workflow }}-${{ github.head_ref || github.event.workflow_run.head_branch || github.run_id }}
cancel-in-progress: true
on: push
@@ -8,8 +8,6 @@ on: push
env:
OPENAI_API_KEY: ${{ secrets.OPENAI_API_KEY }}
SLACK_BOT_TOKEN: ${{ secrets.SLACK_BOT_TOKEN }}
GEN_AI_API_KEY: ${{ secrets.OPENAI_API_KEY }}
MOCK_LLM_RESPONSE: true
jobs:
playwright-tests:
@@ -198,47 +196,43 @@ jobs:
cd deployment/docker_compose
docker compose -f docker-compose.dev.yml -p danswer-stack down -v
# NOTE: Chromatic UI diff testing is currently disabled.
# We are using Playwright for local and CI testing without visual regression checks.
# Chromatic may be reintroduced in the future for UI diff testing if needed.
chromatic-tests:
name: Chromatic Tests
# chromatic-tests:
# name: Chromatic Tests
needs: playwright-tests
runs-on:
[
runs-on,
runner=32cpu-linux-x64,
disk=large,
"run-id=${{ github.run_id }}",
]
steps:
- name: Checkout code
uses: actions/checkout@v4
with:
fetch-depth: 0
# needs: playwright-tests
# runs-on:
# [
# runs-on,
# runner=32cpu-linux-x64,
# disk=large,
# "run-id=${{ github.run_id }}",
# ]
# steps:
# - name: Checkout code
# uses: actions/checkout@v4
# with:
# fetch-depth: 0
- name: Setup node
uses: actions/setup-node@v4
with:
node-version: 22
# - name: Setup node
# uses: actions/setup-node@v4
# with:
# node-version: 22
- name: Install node dependencies
working-directory: ./web
run: npm ci
# - name: Install node dependencies
# working-directory: ./web
# run: npm ci
- name: Download Playwright test results
uses: actions/download-artifact@v4
with:
name: test-results
path: ./web/test-results
# - name: Download Playwright test results
# uses: actions/download-artifact@v4
# with:
# name: test-results
# path: ./web/test-results
# - name: Run Chromatic
# uses: chromaui/action@latest
# with:
# playwright: true
# projectToken: ${{ secrets.CHROMATIC_PROJECT_TOKEN }}
# workingDir: ./web
# env:
# CHROMATIC_ARCHIVE_LOCATION: ./test-results
- name: Run Chromatic
uses: chromaui/action@latest
with:
playwright: true
projectToken: ${{ secrets.CHROMATIC_PROJECT_TOKEN }}
workingDir: ./web
env:
CHROMATIC_ARCHIVE_LOCATION: ./test-results

View File

@@ -21,10 +21,10 @@ jobs:
- name: Set up Helm
uses: azure/setup-helm@v4.2.0
with:
version: v3.17.0
version: v3.14.4
- name: Set up chart-testing
uses: helm/chart-testing-action@v2.7.0
uses: helm/chart-testing-action@v2.6.1
# even though we specify chart-dirs in ct.yaml, it isn't used by ct for the list-changed command...
- name: Run chart-testing (list-changed)
@@ -37,6 +37,22 @@ jobs:
echo "changed=true" >> "$GITHUB_OUTPUT"
fi
# rkuo: I don't think we need python?
# - name: Set up Python
# uses: actions/setup-python@v5
# with:
# python-version: '3.11'
# cache: 'pip'
# cache-dependency-path: |
# backend/requirements/default.txt
# backend/requirements/dev.txt
# backend/requirements/model_server.txt
# - run: |
# python -m pip install --upgrade pip
# pip install --retries 5 --timeout 30 -r backend/requirements/default.txt
# pip install --retries 5 --timeout 30 -r backend/requirements/dev.txt
# pip install --retries 5 --timeout 30 -r backend/requirements/model_server.txt
# lint all charts if any changes were detected
- name: Run chart-testing (lint)
if: steps.list-changed.outputs.changed == 'true'
@@ -46,7 +62,7 @@ jobs:
- name: Create kind cluster
if: steps.list-changed.outputs.changed == 'true'
uses: helm/kind-action@v1.12.0
uses: helm/kind-action@v1.10.0
- name: Run chart-testing (install)
if: steps.list-changed.outputs.changed == 'true'

View File

@@ -94,27 +94,23 @@ jobs:
cd deployment/docker_compose
ENABLE_PAID_ENTERPRISE_EDITION_FEATURES=true \
MULTI_TENANT=true \
AUTH_TYPE=cloud \
AUTH_TYPE=basic \
REQUIRE_EMAIL_VERIFICATION=false \
DISABLE_TELEMETRY=true \
IMAGE_TAG=test \
DEV_MODE=true \
docker compose -f docker-compose.multitenant-dev.yml -p onyx-stack up -d
docker compose -f docker-compose.dev.yml -p danswer-stack up -d
id: start_docker_multi_tenant
# In practice, `cloud` Auth type would require OAUTH credentials to be set.
- name: Run Multi-Tenant Integration Tests
run: |
echo "Waiting for 3 minutes to ensure API server is ready..."
sleep 180
echo "Running integration tests..."
docker run --rm --network onyx-stack_default \
docker run --rm --network danswer-stack_default \
--name test-runner \
-e POSTGRES_HOST=relational_db \
-e POSTGRES_USER=postgres \
-e POSTGRES_PASSWORD=password \
-e POSTGRES_DB=postgres \
-e POSTGRES_USE_NULL_POOL=true \
-e VESPA_HOST=index \
-e REDIS_HOST=cache \
-e API_SERVER_HOST=api_server \
@@ -123,10 +119,6 @@ jobs:
-e TEST_WEB_HOSTNAME=test-runner \
-e AUTH_TYPE=cloud \
-e MULTI_TENANT=true \
-e REQUIRE_EMAIL_VERIFICATION=false \
-e DISABLE_TELEMETRY=true \
-e IMAGE_TAG=test \
-e DEV_MODE=true \
onyxdotapp/onyx-integration:test \
/app/tests/integration/multitenant_tests
continue-on-error: true
@@ -134,38 +126,34 @@ jobs:
- name: Check multi-tenant test results
run: |
if [ ${{ steps.run_multitenant_tests.outcome }} == 'failure' ]; then
echo "Multi-tenant integration tests failed. Exiting with error."
if [ ${{ steps.run_tests.outcome }} == 'failure' ]; then
echo "Integration tests failed. Exiting with error."
exit 1
else
echo "All multi-tenant integration tests passed successfully."
echo "All integration tests passed successfully."
fi
- name: Stop multi-tenant Docker containers
run: |
cd deployment/docker_compose
docker compose -f docker-compose.multitenant-dev.yml -p onyx-stack down -v
docker compose -f docker-compose.dev.yml -p danswer-stack down -v
# NOTE: Use pre-ping/null pool to reduce flakiness due to dropped connections
- name: Start Docker containers
run: |
cd deployment/docker_compose
ENABLE_PAID_ENTERPRISE_EDITION_FEATURES=true \
AUTH_TYPE=basic \
POSTGRES_POOL_PRE_PING=true \
POSTGRES_USE_NULL_POOL=true \
REQUIRE_EMAIL_VERIFICATION=false \
DISABLE_TELEMETRY=true \
IMAGE_TAG=test \
INTEGRATION_TESTS_MODE=true \
docker compose -f docker-compose.dev.yml -p onyx-stack up -d
docker compose -f docker-compose.dev.yml -p danswer-stack up -d
id: start_docker
- name: Wait for service to be ready
run: |
echo "Starting wait-for-service script..."
docker logs -f onyx-stack-api_server-1 &
docker logs -f danswer-stack-api_server-1 &
start_time=$(date +%s)
timeout=300 # 5 minutes in seconds
@@ -195,24 +183,15 @@ jobs:
done
echo "Finished waiting for service."
- name: Start Mock Services
run: |
cd backend/tests/integration/mock_services
docker compose -f docker-compose.mock-it-services.yml \
-p mock-it-services-stack up -d
# NOTE: Use pre-ping/null to reduce flakiness due to dropped connections
- name: Run Standard Integration Tests
run: |
echo "Running integration tests..."
docker run --rm --network onyx-stack_default \
docker run --rm --network danswer-stack_default \
--name test-runner \
-e POSTGRES_HOST=relational_db \
-e POSTGRES_USER=postgres \
-e POSTGRES_PASSWORD=password \
-e POSTGRES_DB=postgres \
-e POSTGRES_POOL_PRE_PING=true \
-e POSTGRES_USE_NULL_POOL=true \
-e VESPA_HOST=index \
-e REDIS_HOST=cache \
-e API_SERVER_HOST=api_server \
@@ -222,8 +201,6 @@ jobs:
-e CONFLUENCE_USER_NAME=${CONFLUENCE_USER_NAME} \
-e CONFLUENCE_ACCESS_TOKEN=${CONFLUENCE_ACCESS_TOKEN} \
-e TEST_WEB_HOSTNAME=test-runner \
-e MOCK_CONNECTOR_SERVER_HOST=mock_connector_server \
-e MOCK_CONNECTOR_SERVER_PORT=8001 \
onyxdotapp/onyx-integration:test \
/app/tests/integration/tests \
/app/tests/integration/connector_job_tests
@@ -239,30 +216,27 @@ jobs:
echo "All integration tests passed successfully."
fi
# ------------------------------------------------------------
# Always gather logs BEFORE "down":
- name: Dump API server logs
if: always()
# save before stopping the containers so the logs can be captured
- name: Save Docker logs
if: success() || failure()
run: |
cd deployment/docker_compose
docker compose -f docker-compose.dev.yml -p onyx-stack logs --no-color api_server > $GITHUB_WORKSPACE/api_server.log || true
- name: Dump all-container logs (optional)
if: always()
run: |
cd deployment/docker_compose
docker compose -f docker-compose.dev.yml -p onyx-stack logs --no-color > $GITHUB_WORKSPACE/docker-compose.log || true
- name: Upload logs
if: always()
uses: actions/upload-artifact@v4
with:
name: docker-all-logs
path: ${{ github.workspace }}/docker-compose.log
# ------------------------------------------------------------
docker compose -f docker-compose.dev.yml -p danswer-stack logs > docker-compose.log
mv docker-compose.log ${{ github.workspace }}/docker-compose.log
- name: Stop Docker containers
if: always()
run: |
cd deployment/docker_compose
docker compose -f docker-compose.dev.yml -p onyx-stack down -v
docker compose -f docker-compose.dev.yml -p danswer-stack down -v
- name: Upload logs
if: success() || failure()
uses: actions/upload-artifact@v4
with:
name: docker-logs
path: ${{ github.workspace }}/docker-compose.log
- name: Stop Docker containers
run: |
cd deployment/docker_compose
docker compose -f docker-compose.dev.yml -p danswer-stack down -v

View File

@@ -9,9 +9,9 @@ jobs:
runs-on: ubuntu-latest
steps:
- name: Check PR body for Linear link or override
env:
PR_BODY: ${{ github.event.pull_request.body }}
run: |
PR_BODY="${{ github.event.pull_request.body }}"
# Looking for "https://linear.app" in the body
if echo "$PR_BODY" | grep -qE "https://linear\.app"; then
echo "Found a Linear link. Check passed."

View File

@@ -39,15 +39,6 @@ env:
AIRTABLE_TEST_TABLE_ID: ${{ secrets.AIRTABLE_TEST_TABLE_ID }}
AIRTABLE_TEST_TABLE_NAME: ${{ secrets.AIRTABLE_TEST_TABLE_NAME }}
AIRTABLE_ACCESS_TOKEN: ${{ secrets.AIRTABLE_ACCESS_TOKEN }}
# Sharepoint
SHAREPOINT_CLIENT_ID: ${{ secrets.SHAREPOINT_CLIENT_ID }}
SHAREPOINT_CLIENT_SECRET: ${{ secrets.SHAREPOINT_CLIENT_SECRET }}
SHAREPOINT_CLIENT_DIRECTORY_ID: ${{ secrets.SHAREPOINT_CLIENT_DIRECTORY_ID }}
SHAREPOINT_SITE: ${{ secrets.SHAREPOINT_SITE }}
# Gitbook
GITBOOK_SPACE_ID: ${{ secrets.GITBOOK_SPACE_ID }}
GITBOOK_API_KEY: ${{ secrets.GITBOOK_API_KEY }}
jobs:
connectors-check:
# See https://runs-on.com/runners/linux/
@@ -74,9 +65,7 @@ jobs:
python -m pip install --upgrade pip
pip install --retries 5 --timeout 30 -r backend/requirements/default.txt
pip install --retries 5 --timeout 30 -r backend/requirements/dev.txt
playwright install chromium
playwright install-deps chromium
- name: Run Tests
shell: script -q -e -c "bash --noprofile --norc -eo pipefail {0}"
run: py.test -o junit_family=xunit2 -xv --ff backend/tests/daily/connectors

View File

@@ -1,29 +1,18 @@
name: Model Server Tests
name: Connector Tests
on:
schedule:
# This cron expression runs the job daily at 16:00 UTC (9am PT)
- cron: "0 16 * * *"
workflow_dispatch:
inputs:
branch:
description: 'Branch to run the workflow on'
required: false
default: 'main'
env:
# Bedrock
AWS_ACCESS_KEY_ID: ${{ secrets.AWS_ACCESS_KEY_ID }}
AWS_SECRET_ACCESS_KEY: ${{ secrets.AWS_SECRET_ACCESS_KEY }}
AWS_REGION_NAME: ${{ secrets.AWS_REGION_NAME }}
# API keys for testing
COHERE_API_KEY: ${{ secrets.COHERE_API_KEY }}
LITELLM_API_KEY: ${{ secrets.LITELLM_API_KEY }}
LITELLM_API_URL: ${{ secrets.LITELLM_API_URL }}
# OpenAI
OPENAI_API_KEY: ${{ secrets.OPENAI_API_KEY }}
AZURE_API_KEY: ${{ secrets.AZURE_API_KEY }}
AZURE_API_URL: ${{ secrets.AZURE_API_URL }}
jobs:
model-check:
@@ -37,23 +26,6 @@ jobs:
- name: Checkout code
uses: actions/checkout@v4
- name: Login to Docker Hub
uses: docker/login-action@v3
with:
username: ${{ secrets.DOCKER_USERNAME }}
password: ${{ secrets.DOCKER_TOKEN }}
# tag every docker image with "test" so that we can spin up the correct set
# of images during testing
# We don't need to build the Web Docker image since it's not yet used
# in the integration tests. We have a separate action to verify that it builds
# successfully.
- name: Pull Model Server Docker image
run: |
docker pull onyxdotapp/onyx-model-server:latest
docker tag onyxdotapp/onyx-model-server:latest onyxdotapp/onyx-model-server:test
- name: Set up Python
uses: actions/setup-python@v5
with:
@@ -69,49 +41,6 @@ jobs:
pip install --retries 5 --timeout 30 -r backend/requirements/default.txt
pip install --retries 5 --timeout 30 -r backend/requirements/dev.txt
- name: Start Docker containers
run: |
cd deployment/docker_compose
ENABLE_PAID_ENTERPRISE_EDITION_FEATURES=true \
AUTH_TYPE=basic \
REQUIRE_EMAIL_VERIFICATION=false \
DISABLE_TELEMETRY=true \
IMAGE_TAG=test \
docker compose -f docker-compose.model-server-test.yml -p onyx-stack up -d indexing_model_server
id: start_docker
- name: Wait for service to be ready
run: |
echo "Starting wait-for-service script..."
start_time=$(date +%s)
timeout=300 # 5 minutes in seconds
while true; do
current_time=$(date +%s)
elapsed_time=$((current_time - start_time))
if [ $elapsed_time -ge $timeout ]; then
echo "Timeout reached. Service did not become ready in 5 minutes."
exit 1
fi
# Use curl with error handling to ignore specific exit code 56
response=$(curl -s -o /dev/null -w "%{http_code}" http://localhost:9000/api/health || echo "curl_error")
if [ "$response" = "200" ]; then
echo "Service is ready!"
break
elif [ "$response" = "curl_error" ]; then
echo "Curl encountered an error, possibly exit code 56. Continuing to retry..."
else
echo "Service not ready yet (HTTP status $response). Retrying in 5 seconds..."
fi
sleep 5
done
echo "Finished waiting for service."
- name: Run Tests
shell: script -q -e -c "bash --noprofile --norc -eo pipefail {0}"
run: |
@@ -127,23 +56,3 @@ jobs:
-H 'Content-type: application/json' \
--data '{"text":"Scheduled Model Tests failed! Check the run at: https://github.com/${{ github.repository }}/actions/runs/${{ github.run_id }}"}' \
$SLACK_WEBHOOK
- name: Dump all-container logs (optional)
if: always()
run: |
cd deployment/docker_compose
docker compose -f docker-compose.model-server-test.yml -p onyx-stack logs --no-color > $GITHUB_WORKSPACE/docker-compose.log || true
- name: Upload logs
if: always()
uses: actions/upload-artifact@v4
with:
name: docker-all-logs
path: ${{ github.workspace }}/docker-compose.log
- name: Stop Docker containers
if: always()
run: |
cd deployment/docker_compose
docker compose -f docker-compose.model-server-test.yml -p onyx-stack down -v

4
.gitignore vendored
View File

@@ -7,6 +7,4 @@
.vscode/
*.sw?
/backend/tests/regression/answer_quality/search_test_config.yaml
/web/test-results/
backend/onyx/agent_search/main/test_data.json
backend/tests/regression/answer_quality/test_data.json
/web/test-results/

View File

@@ -52,9 +52,3 @@ BING_API_KEY=<REPLACE THIS>
# Enable the full set of Danswer Enterprise Edition features
# NOTE: DO NOT ENABLE THIS UNLESS YOU HAVE A PAID ENTERPRISE LICENSE (or if you are using this for local testing/development)
ENABLE_PAID_ENTERPRISE_EDITION_FEATURES=False
# Agent Search configs # TODO: Remove give proper namings
AGENT_RETRIEVAL_STATS=False # Note: This setting will incur substantial re-ranking effort
AGENT_RERANKING_STATS=True
AGENT_MAX_QUERY_RETRIEVAL_RESULTS=20
AGENT_RERANKING_MAX_QUERY_RETRIEVAL_RESULTS=20

View File

@@ -205,7 +205,7 @@
"--loglevel=INFO",
"--hostname=light@%n",
"-Q",
"vespa_metadata_sync,connector_deletion,doc_permissions_upsert,checkpoint_cleanup",
"vespa_metadata_sync,connector_deletion,doc_permissions_upsert",
],
"presentation": {
"group": "2",

123
README.md
View File

@@ -24,93 +24,112 @@
</a>
</p>
<strong>[Onyx](https://www.onyx.app/)</strong> (formerly Danswer) is the AI platform connected to your company's docs, apps, and people.
Onyx provides a feature rich Chat interface and plugs into any LLM of your choice.
Keep knowledge and access controls sync-ed across over 40 connectors like Google Drive, Slack, Confluence, Salesforce, etc.
Create custom AI agents with unique prompts, knowledge, and actions that the agents can take.
Onyx can be deployed securely anywhere and for any scale - on a laptop, on-premise, or to cloud.
<strong>[Onyx](https://www.onyx.app/)</strong> (formerly Danswer) is the AI Assistant connected to your company's docs, apps, and people.
Onyx provides a Chat interface and plugs into any LLM of your choice. Onyx can be deployed anywhere and for any
scale - on a laptop, on-premise, or to cloud. Since you own the deployment, your user data and chats are fully in your
own control. Onyx is dual Licensed with most of it under MIT license and designed to be modular and easily extensible. The system also comes fully ready
for production usage with user authentication, role management (admin/basic users), chat persistence, and a UI for
configuring AI Assistants.
Onyx also serves as a Enterprise Search across all common workplace tools such as Slack, Google Drive, Confluence, etc.
By combining LLMs and team specific knowledge, Onyx becomes a subject matter expert for the team. Imagine ChatGPT if
it had access to your team's unique knowledge! It enables questions such as "A customer wants feature X, is this already
supported?" or "Where's the pull request for feature Y?"
<h3>Feature Highlights</h3>
<h3>Usage</h3>
**Deep research over your team's knowledge:**
Onyx Web App:
https://private-user-images.githubusercontent.com/32520769/414509312-48392e83-95d0-4fb5-8650-a396e05e0a32.mp4?jwt=eyJhbGciOiJIUzI1NiIsInR5cCI6IkpXVCJ9.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.a9D8A0sgKE9AoaoE-mfFbJ6_OKYeqaf7TZ4Han2JfW8
https://github.com/onyx-dot-app/onyx/assets/32520769/563be14c-9304-47b5-bf0a-9049c2b6f410
Or, plug Onyx into your existing Slack workflows (more integrations to come 😁):
**Use Onyx as a secure AI Chat with any LLM:**
![Onyx Chat Silent Demo](https://github.com/onyx-dot-app/onyx/releases/download/v0.21.1/OnyxChatSilentDemo.gif)
**Easily set up connectors to your apps:**
![Onyx Connector Silent Demo](https://github.com/onyx-dot-app/onyx/releases/download/v0.21.1/OnyxConnectorSilentDemo.gif)
**Access Onyx where your team already works:**
![Onyx Bot Demo](https://github.com/onyx-dot-app/onyx/releases/download/v0.21.1/OnyxBot.png)
https://github.com/onyx-dot-app/onyx/assets/25087905/3e19739b-d178-4371-9a38-011430bdec1b
For more details on the Admin UI to manage connectors and users, check out our
<strong><a href="https://www.youtube.com/watch?v=geNzY1nbCnU">Full Video Demo</a></strong>!
## Deployment
**To try it out for free and get started in seconds, check out [Onyx Cloud](https://cloud.onyx.app/signup)**.
Onyx can also be run locally (even on a laptop) or deployed on a virtual machine with a single
Onyx can easily be run locally (even on a laptop) or deployed on a virtual machine with a single
`docker compose` command. Checkout our [docs](https://docs.onyx.app/quickstart) to learn more.
We also have built-in support for high-availability/scalable deployment on Kubernetes.
References [here](https://github.com/onyx-dot-app/onyx/tree/main/deployment).
We also have built-in support for deployment on Kubernetes. Files for that can be found [here](https://github.com/onyx-dot-app/onyx/tree/main/deployment/kubernetes).
## 💃 Main Features
## 🔍 Other Notable Benefits of Onyx
- Custom deep learning models for indexing and inference time, only through Onyx + learning from user feedback.
- Flexible security features like SSO (OIDC/SAML/OAuth2), RBAC, encryption of credentials, etc.
- Knowledge curation features like document-sets, query history, usage analytics, etc.
- Scalable deployment options tested up to many tens of thousands users and hundreds of millions of documents.
- Chat UI with the ability to select documents to chat with.
- Create custom AI Assistants with different prompts and backing knowledge sets.
- Connect Onyx with LLM of your choice (self-host for a fully airgapped solution).
- Document Search + AI Answers for natural language queries.
- Connectors to all common workplace tools like Google Drive, Confluence, Slack, etc.
- Slack integration to get answers and search results directly in Slack.
## 🚧 Roadmap
- New methods in information retrieval (StructRAG, LightGraphRAG, etc.)
- Personalized Search
- Organizational understanding and ability to locate and suggest experts from your team.
- Code Search
- SQL and Structured Query Language
- Chat/Prompt sharing with specific teammates and user groups.
- Multimodal model support, chat with images, video etc.
- Choosing between LLMs and parameters during chat session.
- Tool calling and agent configurations options.
- Organizational understanding and ability to locate and suggest experts from your team.
## Other Notable Benefits of Onyx
- User Authentication with document level access management.
- Best in class Hybrid Search across all sources (BM-25 + prefix aware embedding models).
- Admin Dashboard to configure connectors, document-sets, access, etc.
- Custom deep learning models + learn from user feedback.
- Easy deployment and ability to host Onyx anywhere of your choosing.
## 🔌 Connectors
Keep knowledge and access up to sync across 40+ connectors:
Efficiently pulls the latest changes from:
- Slack
- GitHub
- Google Drive
- Confluence
- Slack
- Gmail
- Salesforce
- Microsoft Sharepoint
- Github
- Jira
- Zendesk
- Gmail
- Notion
- Gong
- Microsoft Teams
- Dropbox
- Slab
- Linear
- Productboard
- Guru
- Bookstack
- Document360
- Sharepoint
- Hubspot
- Local Files
- Websites
- And more ...
See the full list [here](https://docs.onyx.app/connectors).
## 📚 Editions
## 📚 Licensing
There are two editions of Onyx:
- Onyx Community Edition (CE) is available freely under the MIT Expat license. Simply follow the Deployment guide above.
- Onyx Enterprise Edition (EE) includes extra features that are primarily useful for larger organizations.
For feature details, check out [our website](https://www.onyx.app/pricing).
- Onyx Community Edition (CE) is available freely under the MIT Expat license. This version has ALL the core features discussed above. This is the version of Onyx you will get if you follow the Deployment guide above.
- Onyx Enterprise Edition (EE) includes extra features that are primarily useful for larger organizations. Specifically, this includes:
- Single Sign-On (SSO), with support for both SAML and OIDC
- Role-based access control
- Document permission inheritance from connected sources
- Usage analytics and query history accessible to admins
- Whitelabeling
- API key authentication
- Encryption of secrets
- Any many more! Checkout [our website](https://www.onyx.app/) for the latest.
To try the Onyx Enterprise Edition:
1. Checkout [Onyx Cloud](https://cloud.onyx.app/signup).
2. For self-hosting the Enterprise Edition, contact us at [founders@onyx.app](mailto:founders@onyx.app) or book a call with us on our [Cal](https://cal.com/team/onyx/founders).
1. Checkout our [Cloud product](https://cloud.onyx.app/signup).
2. For self-hosting, contact us at [founders@onyx.app](mailto:founders@onyx.app) or book a call with us on our [Cal](https://cal.com/team/danswer/founders).
## 💡 Contributing
Looking to contribute? Please check out the [Contribution Guide](CONTRIBUTING.md) for more details.
## ⭐Star History
[![Star History Chart](https://api.star-history.com/svg?repos=onyx-dot-app/onyx&type=Date)](https://star-history.com/#onyx-dot-app/onyx&Date)

View File

@@ -9,10 +9,8 @@ founders@onyx.app for more information. Please visit https://github.com/onyx-dot
# Default ONYX_VERSION, typically overriden during builds by GitHub Actions.
ARG ONYX_VERSION=0.8-dev
# DO_NOT_TRACK is used to disable telemetry for Unstructured
ENV ONYX_VERSION=${ONYX_VERSION} \
DANSWER_RUNNING_IN_DOCKER="true" \
DO_NOT_TRACK="true"
DANSWER_RUNNING_IN_DOCKER="true"
RUN echo "ONYX_VERSION: ${ONYX_VERSION}"
@@ -28,16 +26,14 @@ RUN apt-get update && \
curl \
zip \
ca-certificates \
libgnutls30 \
libblkid1 \
libmount1 \
libsmartcols1 \
libuuid1 \
libgnutls30=3.7.9-2+deb12u3 \
libblkid1=2.38.1-5+deb12u1 \
libmount1=2.38.1-5+deb12u1 \
libsmartcols1=2.38.1-5+deb12u1 \
libuuid1=2.38.1-5+deb12u1 \
libxmlsec1-dev \
pkg-config \
gcc \
nano \
vim && \
gcc && \
rm -rf /var/lib/apt/lists/* && \
apt-get clean
@@ -103,8 +99,7 @@ COPY ./alembic_tenants /app/alembic_tenants
COPY ./alembic.ini /app/alembic.ini
COPY supervisord.conf /usr/etc/supervisord.conf
# Escape hatch scripts
COPY ./scripts/debugging /app/scripts/debugging
# Escape hatch
COPY ./scripts/force_delete_connector_by_id.py /app/scripts/force_delete_connector_by_id.py
# Put logo in assets

View File

@@ -1,27 +0,0 @@
"""Add indexes to document__tag
Revision ID: 1a03d2c2856b
Revises: 9c00a2bccb83
Create Date: 2025-02-18 10:45:13.957807
"""
from alembic import op
# revision identifiers, used by Alembic.
revision = "1a03d2c2856b"
down_revision = "9c00a2bccb83"
branch_labels: None = None
depends_on: None = None
def upgrade() -> None:
op.create_index(
op.f("ix_document__tag_tag_id"),
"document__tag",
["tag_id"],
unique=False,
)
def downgrade() -> None:
op.drop_index(op.f("ix_document__tag_tag_id"), table_name="document__tag")

View File

@@ -1,32 +0,0 @@
"""set built in to default
Revision ID: 2cdeff6d8c93
Revises: f5437cc136c5
Create Date: 2025-02-11 14:57:51.308775
"""
from alembic import op
# revision identifiers, used by Alembic.
revision = "2cdeff6d8c93"
down_revision = "f5437cc136c5"
branch_labels = None
depends_on = None
def upgrade() -> None:
# Prior to this migration / point in the codebase history,
# built in personas were implicitly treated as default personas (with no option to change this)
# This migration makes that explicit
op.execute(
"""
UPDATE persona
SET is_default_persona = TRUE
WHERE builtin_persona = TRUE
"""
)
def downgrade() -> None:
pass

View File

@@ -1,36 +0,0 @@
"""add chat session specific temperature override
Revision ID: 2f80c6a2550f
Revises: 33ea50e88f24
Create Date: 2025-01-31 10:30:27.289646
"""
from alembic import op
import sqlalchemy as sa
# revision identifiers, used by Alembic.
revision = "2f80c6a2550f"
down_revision = "33ea50e88f24"
branch_labels = None
depends_on = None
def upgrade() -> None:
op.add_column(
"chat_session", sa.Column("temperature_override", sa.Float(), nullable=True)
)
op.add_column(
"user",
sa.Column(
"temperature_override_enabled",
sa.Boolean(),
nullable=False,
server_default=sa.false(),
),
)
def downgrade() -> None:
op.drop_column("chat_session", "temperature_override")
op.drop_column("user", "temperature_override_enabled")

View File

@@ -1,80 +0,0 @@
"""foreign key input prompts
Revision ID: 33ea50e88f24
Revises: a6df6b88ef81
Create Date: 2025-01-29 10:54:22.141765
"""
from alembic import op
# revision identifiers, used by Alembic.
revision = "33ea50e88f24"
down_revision = "a6df6b88ef81"
branch_labels = None
depends_on = None
def upgrade() -> None:
# Safely drop constraints if exists
op.execute(
"""
ALTER TABLE inputprompt__user
DROP CONSTRAINT IF EXISTS inputprompt__user_input_prompt_id_fkey
"""
)
op.execute(
"""
ALTER TABLE inputprompt__user
DROP CONSTRAINT IF EXISTS inputprompt__user_user_id_fkey
"""
)
# Recreate with ON DELETE CASCADE
op.create_foreign_key(
"inputprompt__user_input_prompt_id_fkey",
"inputprompt__user",
"inputprompt",
["input_prompt_id"],
["id"],
ondelete="CASCADE",
)
op.create_foreign_key(
"inputprompt__user_user_id_fkey",
"inputprompt__user",
"user",
["user_id"],
["id"],
ondelete="CASCADE",
)
def downgrade() -> None:
# Drop the new FKs with ondelete
op.drop_constraint(
"inputprompt__user_input_prompt_id_fkey",
"inputprompt__user",
type_="foreignkey",
)
op.drop_constraint(
"inputprompt__user_user_id_fkey",
"inputprompt__user",
type_="foreignkey",
)
# Recreate them without cascading
op.create_foreign_key(
"inputprompt__user_input_prompt_id_fkey",
"inputprompt__user",
"inputprompt",
["input_prompt_id"],
["id"],
)
op.create_foreign_key(
"inputprompt__user_user_id_fkey",
"inputprompt__user",
"user",
["user_id"],
["id"],
)

View File

@@ -1,37 +0,0 @@
"""lowercase_user_emails
Revision ID: 4d58345da04a
Revises: f1ca58b2f2ec
Create Date: 2025-01-29 07:48:46.784041
"""
from alembic import op
from sqlalchemy.sql import text
# revision identifiers, used by Alembic.
revision = "4d58345da04a"
down_revision = "f1ca58b2f2ec"
branch_labels = None
depends_on = None
def upgrade() -> None:
# Get database connection
connection = op.get_bind()
# Update all user emails to lowercase
connection.execute(
text(
"""
UPDATE "user"
SET email = LOWER(email)
WHERE email != LOWER(email)
"""
)
)
def downgrade() -> None:
# Cannot restore original case of emails
pass

View File

@@ -5,6 +5,7 @@ Revises: 47e5bef3a1d7
Create Date: 2024-11-06 13:15:53.302644
"""
import logging
from typing import cast
from alembic import op
import sqlalchemy as sa
@@ -19,8 +20,13 @@ down_revision = "47e5bef3a1d7"
branch_labels: None = None
depends_on: None = None
# Configure logging
logger = logging.getLogger("alembic.runtime.migration")
logger.setLevel(logging.INFO)
def upgrade() -> None:
logger.info(f"{revision}: create_table: slack_bot")
# Create new slack_bot table
op.create_table(
"slack_bot",
@@ -57,6 +63,7 @@ def upgrade() -> None:
)
# Handle existing Slack bot tokens first
logger.info(f"{revision}: Checking for existing Slack bot.")
bot_token = None
app_token = None
first_row_id = None
@@ -64,12 +71,15 @@ def upgrade() -> None:
try:
tokens = cast(dict, get_kv_store().load("slack_bot_tokens_config_key"))
except Exception:
logger.warning("No existing Slack bot tokens found.")
tokens = {}
bot_token = tokens.get("bot_token")
app_token = tokens.get("app_token")
if bot_token and app_token:
logger.info(f"{revision}: Found bot and app tokens.")
session = Session(bind=op.get_bind())
new_slack_bot = SlackBot(
name="Slack Bot (Migrated)",
@@ -160,9 +170,10 @@ def upgrade() -> None:
# Clean up old tokens if they existed
try:
if bot_token and app_token:
logger.info(f"{revision}: Removing old bot and app tokens.")
get_kv_store().delete("slack_bot_tokens_config_key")
except Exception:
pass
logger.warning("tried to delete tokens in dynamic config but failed")
# Rename the table
op.rename_table(
"slack_bot_config__standard_answer_category",
@@ -179,6 +190,8 @@ def upgrade() -> None:
# Drop the table with CASCADE to handle dependent objects
op.execute("DROP TABLE slack_bot_config CASCADE")
logger.info(f"{revision}: Migration complete.")
def downgrade() -> None:
# Recreate the old slack_bot_config table
@@ -260,7 +273,7 @@ def downgrade() -> None:
}
get_kv_store().store("slack_bot_tokens_config_key", tokens)
except Exception:
pass
logger.warning("Failed to save tokens back to KV store")
# Drop the new tables in reverse order
op.drop_table("slack_channel_config")

View File

@@ -1,32 +0,0 @@
"""add index
Revision ID: 8f43500ee275
Revises: da42808081e3
Create Date: 2025-02-24 17:35:33.072714
"""
from alembic import op
# revision identifiers, used by Alembic.
revision = "8f43500ee275"
down_revision = "da42808081e3"
branch_labels = None
depends_on = None
def upgrade() -> None:
# Create a basic index on the lowercase message column for direct text matching
# Limit to 1500 characters to stay well under the 2856 byte limit of btree version 4
# op.execute(
# """
# CREATE INDEX idx_chat_message_message_lower
# ON chat_message (LOWER(substring(message, 1, 1500)))
# """
# )
pass
def downgrade() -> None:
# Drop the index
op.execute("DROP INDEX IF EXISTS idx_chat_message_message_lower;")

View File

@@ -1,107 +0,0 @@
"""agent_tracking
Revision ID: 98a5008d8711
Revises: 2f80c6a2550f
Create Date: 2025-01-29 17:00:00.000001
"""
from alembic import op
import sqlalchemy as sa
from sqlalchemy.dialects import postgresql
from sqlalchemy.dialects.postgresql import UUID
# revision identifiers, used by Alembic.
revision = "98a5008d8711"
down_revision = "2f80c6a2550f"
branch_labels = None
depends_on = None
def upgrade() -> None:
op.create_table(
"agent__search_metrics",
sa.Column("id", sa.Integer(), nullable=False),
sa.Column("user_id", postgresql.UUID(as_uuid=True), nullable=True),
sa.Column("persona_id", sa.Integer(), nullable=True),
sa.Column("agent_type", sa.String(), nullable=False),
sa.Column("start_time", sa.DateTime(timezone=True), nullable=False),
sa.Column("base_duration_s", sa.Float(), nullable=False),
sa.Column("full_duration_s", sa.Float(), nullable=False),
sa.Column("base_metrics", postgresql.JSONB(), nullable=True),
sa.Column("refined_metrics", postgresql.JSONB(), nullable=True),
sa.Column("all_metrics", postgresql.JSONB(), nullable=True),
sa.ForeignKeyConstraint(
["persona_id"],
["persona.id"],
),
sa.ForeignKeyConstraint(["user_id"], ["user.id"], ondelete="CASCADE"),
sa.PrimaryKeyConstraint("id"),
)
# Create sub_question table
op.create_table(
"agent__sub_question",
sa.Column("id", sa.Integer, primary_key=True),
sa.Column("primary_question_id", sa.Integer, sa.ForeignKey("chat_message.id")),
sa.Column(
"chat_session_id", UUID(as_uuid=True), sa.ForeignKey("chat_session.id")
),
sa.Column("sub_question", sa.Text),
sa.Column(
"time_created", sa.DateTime(timezone=True), server_default=sa.func.now()
),
sa.Column("sub_answer", sa.Text),
sa.Column("sub_question_doc_results", postgresql.JSONB(), nullable=True),
sa.Column("level", sa.Integer(), nullable=False),
sa.Column("level_question_num", sa.Integer(), nullable=False),
)
# Create sub_query table
op.create_table(
"agent__sub_query",
sa.Column("id", sa.Integer, primary_key=True),
sa.Column(
"parent_question_id", sa.Integer, sa.ForeignKey("agent__sub_question.id")
),
sa.Column(
"chat_session_id", UUID(as_uuid=True), sa.ForeignKey("chat_session.id")
),
sa.Column("sub_query", sa.Text),
sa.Column(
"time_created", sa.DateTime(timezone=True), server_default=sa.func.now()
),
)
# Create sub_query__search_doc association table
op.create_table(
"agent__sub_query__search_doc",
sa.Column(
"sub_query_id",
sa.Integer,
sa.ForeignKey("agent__sub_query.id"),
primary_key=True,
),
sa.Column(
"search_doc_id",
sa.Integer,
sa.ForeignKey("search_doc.id"),
primary_key=True,
),
)
op.add_column(
"chat_message",
sa.Column(
"refined_answer_improvement",
sa.Boolean(),
nullable=True,
),
)
def downgrade() -> None:
op.drop_column("chat_message", "refined_answer_improvement")
op.drop_table("agent__sub_query__search_doc")
op.drop_table("agent__sub_query")
op.drop_table("agent__sub_question")
op.drop_table("agent__search_metrics")

View File

@@ -1,43 +0,0 @@
"""chat_message_agentic
Revision ID: 9c00a2bccb83
Revises: b7a7eee5aa15
Create Date: 2025-02-17 11:15:43.081150
"""
from alembic import op
import sqlalchemy as sa
# revision identifiers, used by Alembic.
revision = "9c00a2bccb83"
down_revision = "b7a7eee5aa15"
branch_labels = None
depends_on = None
def upgrade() -> None:
# First add the column as nullable
op.add_column("chat_message", sa.Column("is_agentic", sa.Boolean(), nullable=True))
# Update existing rows based on presence of SubQuestions
op.execute(
"""
UPDATE chat_message
SET is_agentic = EXISTS (
SELECT 1
FROM agent__sub_question
WHERE agent__sub_question.primary_question_id = chat_message.id
)
WHERE is_agentic IS NULL
"""
)
# Make the column non-nullable with a default value of False
op.alter_column(
"chat_message", "is_agentic", nullable=False, server_default=sa.text("false")
)
def downgrade() -> None:
op.drop_column("chat_message", "is_agentic")

View File

@@ -1,29 +0,0 @@
"""remove recent assistants
Revision ID: a6df6b88ef81
Revises: 4d58345da04a
Create Date: 2025-01-29 10:25:52.790407
"""
from alembic import op
import sqlalchemy as sa
from sqlalchemy.dialects import postgresql
# revision identifiers, used by Alembic.
revision = "a6df6b88ef81"
down_revision = "4d58345da04a"
branch_labels = None
depends_on = None
def upgrade() -> None:
op.drop_column("user", "recent_assistants")
def downgrade() -> None:
op.add_column(
"user",
sa.Column(
"recent_assistants", postgresql.JSONB(), server_default="[]", nullable=False
),
)

View File

@@ -1,29 +0,0 @@
"""remove inactive ccpair status on downgrade
Revision ID: acaab4ef4507
Revises: b388730a2899
Create Date: 2025-02-16 18:21:41.330212
"""
from alembic import op
from onyx.db.models import ConnectorCredentialPair
from onyx.db.enums import ConnectorCredentialPairStatus
from sqlalchemy import update
# revision identifiers, used by Alembic.
revision = "acaab4ef4507"
down_revision = "b388730a2899"
branch_labels = None
depends_on = None
def upgrade() -> None:
pass
def downgrade() -> None:
op.execute(
update(ConnectorCredentialPair)
.where(ConnectorCredentialPair.status == ConnectorCredentialPairStatus.INVALID)
.values(status=ConnectorCredentialPairStatus.ACTIVE)
)

View File

@@ -1,31 +0,0 @@
"""nullable preferences
Revision ID: b388730a2899
Revises: 1a03d2c2856b
Create Date: 2025-02-17 18:49:22.643902
"""
from alembic import op
# revision identifiers, used by Alembic.
revision = "b388730a2899"
down_revision = "1a03d2c2856b"
branch_labels = None
depends_on = None
def upgrade() -> None:
op.alter_column("user", "temperature_override_enabled", nullable=True)
op.alter_column("user", "auto_scroll", nullable=True)
def downgrade() -> None:
# Ensure no null values before making columns non-nullable
op.execute(
'UPDATE "user" SET temperature_override_enabled = false WHERE temperature_override_enabled IS NULL'
)
op.execute('UPDATE "user" SET auto_scroll = false WHERE auto_scroll IS NULL')
op.alter_column("user", "temperature_override_enabled", nullable=False)
op.alter_column("user", "auto_scroll", nullable=False)

View File

@@ -1,124 +0,0 @@
"""Add checkpointing/failure handling
Revision ID: b7a7eee5aa15
Revises: f39c5794c10a
Create Date: 2025-01-24 15:17:36.763172
"""
from alembic import op
import sqlalchemy as sa
from sqlalchemy.dialects import postgresql
# revision identifiers, used by Alembic.
revision = "b7a7eee5aa15"
down_revision = "f39c5794c10a"
branch_labels = None
depends_on = None
def upgrade() -> None:
op.add_column(
"index_attempt",
sa.Column("checkpoint_pointer", sa.String(), nullable=True),
)
op.add_column(
"index_attempt",
sa.Column("poll_range_start", sa.DateTime(timezone=True), nullable=True),
)
op.add_column(
"index_attempt",
sa.Column("poll_range_end", sa.DateTime(timezone=True), nullable=True),
)
op.create_index(
"ix_index_attempt_cc_pair_settings_poll",
"index_attempt",
[
"connector_credential_pair_id",
"search_settings_id",
"status",
sa.text("time_updated DESC"),
],
)
# Drop the old IndexAttemptError table
op.drop_index("index_attempt_id", table_name="index_attempt_errors")
op.drop_table("index_attempt_errors")
# Create the new version of the table
op.create_table(
"index_attempt_errors",
sa.Column("id", sa.Integer(), primary_key=True),
sa.Column("index_attempt_id", sa.Integer(), nullable=False),
sa.Column("connector_credential_pair_id", sa.Integer(), nullable=False),
sa.Column("document_id", sa.String(), nullable=True),
sa.Column("document_link", sa.String(), nullable=True),
sa.Column("entity_id", sa.String(), nullable=True),
sa.Column("failed_time_range_start", sa.DateTime(timezone=True), nullable=True),
sa.Column("failed_time_range_end", sa.DateTime(timezone=True), nullable=True),
sa.Column("failure_message", sa.Text(), nullable=False),
sa.Column("is_resolved", sa.Boolean(), nullable=False, default=False),
sa.Column(
"time_created",
sa.DateTime(timezone=True),
server_default=sa.text("now()"),
nullable=False,
),
sa.ForeignKeyConstraint(
["index_attempt_id"],
["index_attempt.id"],
),
sa.ForeignKeyConstraint(
["connector_credential_pair_id"],
["connector_credential_pair.id"],
),
)
def downgrade() -> None:
op.execute("SET lock_timeout = '5s'")
# try a few times to drop the table, this has been observed to fail due to other locks
# blocking the drop
NUM_TRIES = 10
for i in range(NUM_TRIES):
try:
op.drop_table("index_attempt_errors")
break
except Exception as e:
if i == NUM_TRIES - 1:
raise e
print(f"Error dropping table: {e}. Retrying...")
op.execute("SET lock_timeout = DEFAULT")
# Recreate the old IndexAttemptError table
op.create_table(
"index_attempt_errors",
sa.Column("id", sa.Integer(), primary_key=True),
sa.Column("index_attempt_id", sa.Integer(), nullable=True),
sa.Column("batch", sa.Integer(), nullable=True),
sa.Column("doc_summaries", postgresql.JSONB(), nullable=False),
sa.Column("error_msg", sa.Text(), nullable=True),
sa.Column("traceback", sa.Text(), nullable=True),
sa.Column(
"time_created",
sa.DateTime(timezone=True),
server_default=sa.text("now()"),
),
sa.ForeignKeyConstraint(
["index_attempt_id"],
["index_attempt.id"],
),
)
op.create_index(
"index_attempt_id",
"index_attempt_errors",
["time_created"],
)
op.drop_index("ix_index_attempt_cc_pair_settings_poll")
op.drop_column("index_attempt", "checkpoint_pointer")
op.drop_column("index_attempt", "poll_range_start")
op.drop_column("index_attempt", "poll_range_end")

View File

@@ -1,120 +0,0 @@
"""migrate jira connectors to new format
Revision ID: da42808081e3
Revises: f13db29f3101
Create Date: 2025-02-24 11:24:54.396040
"""
from alembic import op
import sqlalchemy as sa
import json
from onyx.configs.constants import DocumentSource
from onyx.connectors.onyx_jira.utils import extract_jira_project
# revision identifiers, used by Alembic.
revision = "da42808081e3"
down_revision = "f13db29f3101"
branch_labels = None
depends_on = None
def upgrade() -> None:
# Get all Jira connectors
conn = op.get_bind()
# First get all Jira connectors
jira_connectors = conn.execute(
sa.text(
"""
SELECT id, connector_specific_config
FROM connector
WHERE source = :source
"""
),
{"source": DocumentSource.JIRA.value.upper()},
).fetchall()
# Update each connector's config
for connector_id, old_config in jira_connectors:
if not old_config:
continue
# Extract project key from URL if it exists
new_config: dict[str, str | None] = {}
if project_url := old_config.get("jira_project_url"):
# Parse the URL to get base and project
try:
jira_base, project_key = extract_jira_project(project_url)
new_config = {"jira_base_url": jira_base, "project_key": project_key}
except ValueError:
# If URL parsing fails, just use the URL as the base
new_config = {
"jira_base_url": project_url.split("/projects/")[0],
"project_key": None,
}
else:
# For connectors without a project URL, we need admin intervention
# Mark these for review
print(
f"WARNING: Jira connector {connector_id} has no project URL configured"
)
continue
# Update the connector config
conn.execute(
sa.text(
"""
UPDATE connector
SET connector_specific_config = :new_config
WHERE id = :id
"""
),
{"id": connector_id, "new_config": json.dumps(new_config)},
)
def downgrade() -> None:
# Get all Jira connectors
conn = op.get_bind()
# First get all Jira connectors
jira_connectors = conn.execute(
sa.text(
"""
SELECT id, connector_specific_config
FROM connector
WHERE source = :source
"""
),
{"source": DocumentSource.JIRA.value.upper()},
).fetchall()
# Update each connector's config back to the old format
for connector_id, new_config in jira_connectors:
if not new_config:
continue
old_config = {}
base_url = new_config.get("jira_base_url")
project_key = new_config.get("project_key")
if base_url and project_key:
old_config = {"jira_project_url": f"{base_url}/projects/{project_key}"}
elif base_url:
old_config = {"jira_project_url": base_url}
else:
continue
# Update the connector config
conn.execute(
sa.text(
"""
UPDATE connector
SET connector_specific_config = :old_config
WHERE id = :id
"""
),
{"id": connector_id, "old_config": old_config},
)

View File

@@ -1,80 +0,0 @@
"""add default slack channel config
Revision ID: eaa3b5593925
Revises: 98a5008d8711
Create Date: 2025-02-03 18:07:56.552526
"""
from alembic import op
import sqlalchemy as sa
# revision identifiers, used by Alembic.
revision = "eaa3b5593925"
down_revision = "98a5008d8711"
branch_labels = None
depends_on = None
def upgrade() -> None:
# Add is_default column
op.add_column(
"slack_channel_config",
sa.Column("is_default", sa.Boolean(), nullable=False, server_default="false"),
)
op.create_index(
"ix_slack_channel_config_slack_bot_id_default",
"slack_channel_config",
["slack_bot_id", "is_default"],
unique=True,
postgresql_where=sa.text("is_default IS TRUE"),
)
# Create default channel configs for existing slack bots without one
conn = op.get_bind()
slack_bots = conn.execute(sa.text("SELECT id FROM slack_bot")).fetchall()
for slack_bot in slack_bots:
slack_bot_id = slack_bot[0]
existing_default = conn.execute(
sa.text(
"SELECT id FROM slack_channel_config WHERE slack_bot_id = :bot_id AND is_default = TRUE"
),
{"bot_id": slack_bot_id},
).fetchone()
if not existing_default:
conn.execute(
sa.text(
"""
INSERT INTO slack_channel_config (
slack_bot_id, persona_id, channel_config, enable_auto_filters, is_default
) VALUES (
:bot_id, NULL,
'{"channel_name": null, '
'"respond_member_group_list": [], '
'"answer_filters": [], '
'"follow_up_tags": [], '
'"respond_tag_only": true}',
FALSE, TRUE
)
"""
),
{"bot_id": slack_bot_id},
)
def downgrade() -> None:
# Delete default slack channel configs
conn = op.get_bind()
conn.execute(sa.text("DELETE FROM slack_channel_config WHERE is_default = TRUE"))
# Remove index
op.drop_index(
"ix_slack_channel_config_slack_bot_id_default",
table_name="slack_channel_config",
)
# Remove is_default column
op.drop_column("slack_channel_config", "is_default")

View File

@@ -1,27 +0,0 @@
"""Add composite index for last_modified and last_synced to document
Revision ID: f13db29f3101
Revises: b388730a2899
Create Date: 2025-02-18 22:48:11.511389
"""
from alembic import op
# revision identifiers, used by Alembic.
revision = "f13db29f3101"
down_revision = "acaab4ef4507"
branch_labels: str | None = None
depends_on: str | None = None
def upgrade() -> None:
op.create_index(
"ix_document_sync_status",
"document",
["last_modified", "last_synced"],
unique=False,
)
def downgrade() -> None:
op.drop_index("ix_document_sync_status", table_name="document")

View File

@@ -1,33 +0,0 @@
"""add passthrough auth to tool
Revision ID: f1ca58b2f2ec
Revises: c7bf5721733e
Create Date: 2024-03-19
"""
from typing import Sequence, Union
from alembic import op
import sqlalchemy as sa
# revision identifiers, used by Alembic.
revision: str = "f1ca58b2f2ec"
down_revision: Union[str, None] = "c7bf5721733e"
branch_labels: Union[str, Sequence[str], None] = None
depends_on: Union[str, Sequence[str], None] = None
def upgrade() -> None:
# Add passthrough_auth column to tool table with default value of False
op.add_column(
"tool",
sa.Column(
"passthrough_auth", sa.Boolean(), nullable=False, server_default=sa.false()
),
)
def downgrade() -> None:
# Remove passthrough_auth column from tool table
op.drop_column("tool", "passthrough_auth")

View File

@@ -1,40 +0,0 @@
"""Add background errors table
Revision ID: f39c5794c10a
Revises: 2cdeff6d8c93
Create Date: 2025-02-12 17:11:14.527876
"""
from alembic import op
import sqlalchemy as sa
# revision identifiers, used by Alembic.
revision = "f39c5794c10a"
down_revision = "2cdeff6d8c93"
branch_labels = None
depends_on = None
def upgrade() -> None:
op.create_table(
"background_error",
sa.Column("id", sa.Integer(), nullable=False),
sa.Column("message", sa.String(), nullable=False),
sa.Column(
"time_created",
sa.DateTime(timezone=True),
server_default=sa.text("now()"),
nullable=False,
),
sa.Column("cc_pair_id", sa.Integer(), nullable=True),
sa.PrimaryKeyConstraint("id"),
sa.ForeignKeyConstraint(
["cc_pair_id"],
["connector_credential_pair.id"],
ondelete="CASCADE",
),
)
def downgrade() -> None:
op.drop_table("background_error")

View File

@@ -1,53 +0,0 @@
"""delete non-search assistants
Revision ID: f5437cc136c5
Revises: eaa3b5593925
Create Date: 2025-02-04 16:17:15.677256
"""
from alembic import op
# revision identifiers, used by Alembic.
revision = "f5437cc136c5"
down_revision = "eaa3b5593925"
branch_labels = None
depends_on = None
def upgrade() -> None:
pass
def downgrade() -> None:
# Fix: split the statements into multiple op.execute() calls
op.execute(
"""
WITH personas_without_search AS (
SELECT p.id
FROM persona p
LEFT JOIN persona__tool pt ON p.id = pt.persona_id
LEFT JOIN tool t ON pt.tool_id = t.id
GROUP BY p.id
HAVING COUNT(CASE WHEN t.in_code_tool_id = 'run_search' THEN 1 END) = 0
)
UPDATE slack_channel_config
SET persona_id = NULL
WHERE is_default = TRUE AND persona_id IN (SELECT id FROM personas_without_search)
"""
)
op.execute(
"""
WITH personas_without_search AS (
SELECT p.id
FROM persona p
LEFT JOIN persona__tool pt ON p.id = pt.persona_id
LEFT JOIN tool t ON pt.tool_id = t.id
GROUP BY p.id
HAVING COUNT(CASE WHEN t.in_code_tool_id = 'run_search' THEN 1 END) = 0
)
DELETE FROM slack_channel_config
WHERE is_default = FALSE AND persona_id IN (SELECT id FROM personas_without_search)
"""
)

View File

@@ -5,9 +5,11 @@ from onyx.background.celery.apps.primary import celery_app
from onyx.background.task_utils import build_celery_task_wrapper
from onyx.configs.app_configs import JOB_TIMEOUT
from onyx.db.chat import delete_chat_sessions_older_than
from onyx.db.engine import get_session_with_current_tenant
from onyx.db.engine import get_session_with_tenant
from onyx.server.settings.store import load_settings
from onyx.utils.logger import setup_logger
from shared_configs.configs import MULTI_TENANT
from shared_configs.contextvars import CURRENT_TENANT_ID_CONTEXTVAR
logger = setup_logger()
@@ -16,8 +18,10 @@ logger = setup_logger()
@build_celery_task_wrapper(name_chat_ttl_task)
@celery_app.task(soft_time_limit=JOB_TIMEOUT)
def perform_ttl_management_task(retention_limit_days: int, *, tenant_id: str) -> None:
with get_session_with_current_tenant() as db_session:
def perform_ttl_management_task(
retention_limit_days: int, *, tenant_id: str | None
) -> None:
with get_session_with_tenant(tenant_id) as db_session:
delete_chat_sessions_older_than(retention_limit_days, db_session)
@@ -28,32 +32,35 @@ def perform_ttl_management_task(retention_limit_days: int, *, tenant_id: str) ->
@celery_app.task(
name="check_ttl_management_task",
ignore_result=True,
soft_time_limit=JOB_TIMEOUT,
)
def check_ttl_management_task(*, tenant_id: str) -> None:
def check_ttl_management_task(*, tenant_id: str | None) -> None:
"""Runs periodically to check if any ttl tasks should be run and adds them
to the queue"""
token = None
if MULTI_TENANT and tenant_id is not None:
token = CURRENT_TENANT_ID_CONTEXTVAR.set(tenant_id)
settings = load_settings()
retention_limit_days = settings.maximum_chat_retention_days
with get_session_with_current_tenant() as db_session:
with get_session_with_tenant(tenant_id) as db_session:
if should_perform_chat_ttl_check(retention_limit_days, db_session):
perform_ttl_management_task.apply_async(
kwargs=dict(
retention_limit_days=retention_limit_days, tenant_id=tenant_id
),
)
if token is not None:
CURRENT_TENANT_ID_CONTEXTVAR.reset(token)
@celery_app.task(
name="autogenerate_usage_report_task",
ignore_result=True,
soft_time_limit=JOB_TIMEOUT,
)
def autogenerate_usage_report_task(*, tenant_id: str) -> None:
def autogenerate_usage_report_task(*, tenant_id: str | None) -> None:
"""This generates usage report under the /admin/generate-usage/report endpoint"""
with get_session_with_current_tenant() as db_session:
with get_session_with_tenant(tenant_id) as db_session:
create_new_usage_report(
db_session=db_session,
user_id=None,

View File

@@ -2,79 +2,30 @@ from datetime import timedelta
from typing import Any
from onyx.background.celery.tasks.beat_schedule import (
beat_cloud_tasks as base_beat_system_tasks,
cloud_tasks_to_schedule as base_cloud_tasks_to_schedule,
)
from onyx.background.celery.tasks.beat_schedule import BEAT_EXPIRES_DEFAULT
from onyx.background.celery.tasks.beat_schedule import (
beat_task_templates as base_beat_task_templates,
tasks_to_schedule as base_tasks_to_schedule,
)
from onyx.background.celery.tasks.beat_schedule import generate_cloud_tasks
from onyx.background.celery.tasks.beat_schedule import (
get_tasks_to_schedule as base_get_tasks_to_schedule,
)
from onyx.configs.constants import OnyxCeleryPriority
from onyx.configs.constants import OnyxCeleryTask
from shared_configs.configs import MULTI_TENANT
ee_beat_system_tasks: list[dict] = []
ee_beat_task_templates: list[dict] = []
ee_beat_task_templates.extend(
[
{
"name": "autogenerate-usage-report",
"task": OnyxCeleryTask.AUTOGENERATE_USAGE_REPORT_TASK,
"schedule": timedelta(days=30),
"options": {
"priority": OnyxCeleryPriority.MEDIUM,
"expires": BEAT_EXPIRES_DEFAULT,
},
},
{
"name": "check-ttl-management",
"task": OnyxCeleryTask.CHECK_TTL_MANAGEMENT_TASK,
"schedule": timedelta(hours=1),
"options": {
"priority": OnyxCeleryPriority.MEDIUM,
"expires": BEAT_EXPIRES_DEFAULT,
},
},
]
)
ee_tasks_to_schedule: list[dict] = []
if not MULTI_TENANT:
ee_tasks_to_schedule = [
{
"name": "autogenerate-usage-report",
"task": OnyxCeleryTask.AUTOGENERATE_USAGE_REPORT_TASK,
"schedule": timedelta(days=30), # TODO: change this to config flag
"options": {
"priority": OnyxCeleryPriority.MEDIUM,
"expires": BEAT_EXPIRES_DEFAULT,
},
},
{
"name": "check-ttl-management",
"task": OnyxCeleryTask.CHECK_TTL_MANAGEMENT_TASK,
"schedule": timedelta(hours=1),
"options": {
"priority": OnyxCeleryPriority.MEDIUM,
"expires": BEAT_EXPIRES_DEFAULT,
},
},
]
ee_tasks_to_schedule = [
{
"name": "autogenerate-usage-report",
"task": OnyxCeleryTask.AUTOGENERATE_USAGE_REPORT_TASK,
"schedule": timedelta(days=30), # TODO: change this to config flag
},
{
"name": "check-ttl-management",
"task": OnyxCeleryTask.CHECK_TTL_MANAGEMENT_TASK,
"schedule": timedelta(hours=1),
},
]
def get_cloud_tasks_to_schedule(beat_multiplier: float) -> list[dict[str, Any]]:
beat_system_tasks = ee_beat_system_tasks + base_beat_system_tasks
beat_task_templates = ee_beat_task_templates + base_beat_task_templates
cloud_tasks = generate_cloud_tasks(
beat_system_tasks, beat_task_templates, beat_multiplier
)
return cloud_tasks
def get_cloud_tasks_to_schedule() -> list[dict[str, Any]]:
return base_cloud_tasks_to_schedule
def get_tasks_to_schedule() -> list[dict[str, Any]]:
return ee_tasks_to_schedule + base_get_tasks_to_schedule()
return ee_tasks_to_schedule + base_tasks_to_schedule

View File

@@ -18,7 +18,7 @@ logger = setup_logger()
def monitor_usergroup_taskset(
tenant_id: str, key_bytes: bytes, r: Redis, db_session: Session
tenant_id: str | None, key_bytes: bytes, r: Redis, db_session: Session
) -> None:
"""This function is likely to move in the worker refactor happening next."""
fence_key = key_bytes.decode("utf-8")

View File

@@ -4,20 +4,6 @@ import os
# Applicable for OIDC Auth
OPENID_CONFIG_URL = os.environ.get("OPENID_CONFIG_URL", "")
# Applicable for OIDC Auth, allows you to override the scopes that
# are requested from the OIDC provider. Currently used when passing
# over access tokens to tool calls and the tool needs more scopes
OIDC_SCOPE_OVERRIDE: list[str] | None = None
_OIDC_SCOPE_OVERRIDE = os.environ.get("OIDC_SCOPE_OVERRIDE")
if _OIDC_SCOPE_OVERRIDE:
try:
OIDC_SCOPE_OVERRIDE = [
scope.strip() for scope in _OIDC_SCOPE_OVERRIDE.split(",")
]
except Exception:
pass
# Applicable for SAML Auth
SAML_CONF_DIR = os.environ.get("SAML_CONF_DIR") or "/app/ee/onyx/configs/saml_config"
@@ -77,5 +63,3 @@ POSTHOG_HOST = os.environ.get("POSTHOG_HOST") or "https://us.i.posthog.com"
HUBSPOT_TRACKING_URL = os.environ.get("HUBSPOT_TRACKING_URL")
ANONYMOUS_USER_COOKIE_NAME = "onyx_anonymous_user"
GATED_TENANTS_KEY = "gated_tenants"

View File

@@ -4,7 +4,6 @@ from sqlalchemy.orm import Session
from onyx.configs.constants import DocumentSource
from onyx.db.connector_credential_pair import get_connector_credential_pair
from onyx.db.enums import AccessType
from onyx.db.enums import ConnectorCredentialPairStatus
from onyx.db.models import Connector
from onyx.db.models import ConnectorCredentialPair
from onyx.db.models import UserGroup__ConnectorCredentialPair
@@ -36,11 +35,10 @@ def _delete_connector_credential_pair_user_groups_relationship__no_commit(
def get_cc_pairs_by_source(
db_session: Session,
source_type: DocumentSource,
access_type: AccessType | None = None,
status: ConnectorCredentialPairStatus | None = None,
only_sync: bool,
) -> list[ConnectorCredentialPair]:
"""
Get all cc_pairs for a given source type with optional filtering by access_type and status
Get all cc_pairs for a given source type (and optionally only sync)
result is sorted by cc_pair id
"""
query = (
@@ -50,11 +48,8 @@ def get_cc_pairs_by_source(
.order_by(ConnectorCredentialPair.id)
)
if access_type is not None:
query = query.filter(ConnectorCredentialPair.access_type == access_type)
if status is not None:
query = query.filter(ConnectorCredentialPair.status == status)
if only_sync:
query = query.filter(ConnectorCredentialPair.access_type == AccessType.SYNC)
cc_pairs = query.all()
return cc_pairs

View File

@@ -2,11 +2,8 @@ from uuid import UUID
from sqlalchemy.orm import Session
from onyx.configs.constants import NotificationType
from onyx.db.models import Persona__User
from onyx.db.models import Persona__UserGroup
from onyx.db.notification import create_notification
from onyx.server.features.persona.models import PersonaSharedNotificationData
def make_persona_private(
@@ -15,9 +12,6 @@ def make_persona_private(
group_ids: list[int] | None,
db_session: Session,
) -> None:
"""NOTE(rkuo): This function batches all updates into a single commit. If we don't
dedupe the inputs, the commit will exception."""
db_session.query(Persona__User).filter(
Persona__User.persona_id == persona_id
).delete(synchronize_session="fetch")
@@ -26,22 +20,11 @@ def make_persona_private(
).delete(synchronize_session="fetch")
if user_ids:
user_ids_set = set(user_ids)
for user_id in user_ids_set:
db_session.add(Persona__User(persona_id=persona_id, user_id=user_id))
create_notification(
user_id=user_id,
notif_type=NotificationType.PERSONA_SHARED,
db_session=db_session,
additional_data=PersonaSharedNotificationData(
persona_id=persona_id,
).model_dump(),
)
for user_uuid in user_ids:
db_session.add(Persona__User(persona_id=persona_id, user_id=user_uuid))
if group_ids:
group_ids_set = set(group_ids)
for group_id in group_ids_set:
for group_id in group_ids:
db_session.add(
Persona__UserGroup(persona_id=persona_id, user_group_id=group_id)
)

View File

@@ -98,9 +98,10 @@ def get_page_of_chat_sessions(
conditions = _build_filter_conditions(start_time, end_time, feedback_filter)
subquery = (
select(ChatSession.id)
select(ChatSession.id, ChatSession.time_created)
.filter(*conditions)
.order_by(desc(ChatSession.time_created), ChatSession.id)
.order_by(ChatSession.id, desc(ChatSession.time_created))
.distinct(ChatSession.id)
.limit(page_size)
.offset(page_num * page_size)
.subquery()
@@ -117,11 +118,7 @@ def get_page_of_chat_sessions(
ChatMessage.chat_message_feedbacks
),
)
.order_by(
desc(ChatSession.time_created),
ChatSession.id,
asc(ChatMessage.id), # Ensure chronological message order
)
.order_by(desc(ChatSession.time_created), asc(ChatMessage.id))
)
return db_session.scalars(stmt).unique().all()

View File

@@ -218,14 +218,14 @@ def fetch_user_groups_for_user(
return db_session.scalars(stmt).all()
def construct_document_id_select_by_usergroup(
def construct_document_select_by_usergroup(
user_group_id: int,
) -> Select:
"""This returns a statement that should be executed using
.yield_per() to minimize overhead. The primary consumers of this function
are background processing task generators."""
stmt = (
select(Document.id)
select(Document)
.join(
DocumentByConnectorCredentialPair,
Document.id == DocumentByConnectorCredentialPair.id,

View File

@@ -13,7 +13,6 @@ from onyx.connectors.confluence.onyx_confluence import OnyxConfluence
from onyx.connectors.confluence.utils import get_user_email_from_username__server
from onyx.connectors.models import SlimDocument
from onyx.db.models import ConnectorCredentialPair
from onyx.indexing.indexing_heartbeat import IndexingHeartbeatInterface
from onyx.utils.logger import setup_logger
logger = setup_logger()
@@ -258,7 +257,6 @@ def _fetch_all_page_restrictions(
slim_docs: list[SlimDocument],
space_permissions_by_space_key: dict[str, ExternalAccess],
is_cloud: bool,
callback: IndexingHeartbeatInterface | None,
) -> list[DocExternalAccess]:
"""
For all pages, if a page has restrictions, then use those restrictions.
@@ -267,12 +265,6 @@ def _fetch_all_page_restrictions(
document_restrictions: list[DocExternalAccess] = []
for slim_doc in slim_docs:
if callback:
if callback.should_stop():
raise RuntimeError("confluence_doc_sync: Stop signal detected")
callback.progress("confluence_doc_sync:fetch_all_page_restrictions", 1)
if slim_doc.perm_sync_data is None:
raise ValueError(
f"No permission sync data found for document {slim_doc.id}"
@@ -342,7 +334,7 @@ def _fetch_all_page_restrictions(
def confluence_doc_sync(
cc_pair: ConnectorCredentialPair, callback: IndexingHeartbeatInterface | None
cc_pair: ConnectorCredentialPair,
) -> list[DocExternalAccess]:
"""
Adds the external permissions to the documents in postgres
@@ -365,16 +357,8 @@ def confluence_doc_sync(
slim_docs = []
logger.debug("Fetching all slim documents from confluence")
for doc_batch in confluence_connector.retrieve_all_slim_documents(
callback=callback
):
for doc_batch in confluence_connector.retrieve_all_slim_documents():
logger.debug(f"Got {len(doc_batch)} slim documents from confluence")
if callback:
if callback.should_stop():
raise RuntimeError("confluence_doc_sync: Stop signal detected")
callback.progress("confluence_doc_sync", 1)
slim_docs.extend(doc_batch)
logger.debug("Fetching all page restrictions for space")
@@ -383,5 +367,4 @@ def confluence_doc_sync(
slim_docs=slim_docs,
space_permissions_by_space_key=space_permissions_by_space_key,
is_cloud=is_cloud,
callback=callback,
)

View File

@@ -1,6 +1,5 @@
from ee.onyx.db.external_perm import ExternalUserGroup
from ee.onyx.external_permissions.confluence.constants import ALL_CONF_EMAILS_GROUP_NAME
from onyx.background.error_logging import emit_background_error
from onyx.connectors.confluence.onyx_confluence import build_confluence_client
from onyx.connectors.confluence.onyx_confluence import OnyxConfluence
from onyx.connectors.confluence.utils import get_user_email_from_username__server
@@ -11,51 +10,33 @@ logger = setup_logger()
def _build_group_member_email_map(
confluence_client: OnyxConfluence, cc_pair_id: int
confluence_client: OnyxConfluence,
) -> dict[str, set[str]]:
group_member_emails: dict[str, set[str]] = {}
for user in confluence_client.paginated_cql_user_retrieval():
logger.debug(f"Processing groups for user: {user}")
email = user.email
for user_result in confluence_client.paginated_cql_user_retrieval():
user = user_result.get("user", {})
if not user:
logger.warning(f"user result missing user field: {user_result}")
continue
email = user.get("email")
if not email:
# This field is only present in Confluence Server
user_name = user.username
user_name = user.get("username")
# If it is present, try to get the email using a Server-specific method
if user_name:
email = get_user_email_from_username__server(
confluence_client=confluence_client,
user_name=user_name,
)
if not email:
# If we still don't have an email, skip this user
msg = f"user result missing email field: {user}"
if user.type == "app":
logger.warning(msg)
else:
emit_background_error(msg, cc_pair_id=cc_pair_id)
logger.error(msg)
logger.warning(f"user result missing email field: {user_result}")
continue
all_users_groups: set[str] = set()
for group in confluence_client.paginated_groups_by_user_retrieval(user.user_id):
for group in confluence_client.paginated_groups_by_user_retrieval(user):
# group name uniqueness is enforced by Confluence, so we can use it as a group ID
group_id = group["name"]
group_member_emails.setdefault(group_id, set()).add(email)
all_users_groups.add(group_id)
if not all_users_groups:
msg = f"No groups found for user with email: {email}"
emit_background_error(msg, cc_pair_id=cc_pair_id)
logger.error(msg)
else:
logger.debug(f"Found groups {all_users_groups} for user with email {email}")
if not group_member_emails:
msg = "No groups found for any users."
emit_background_error(msg, cc_pair_id=cc_pair_id)
logger.error(msg)
return group_member_emails
@@ -71,7 +52,6 @@ def confluence_group_sync(
group_member_email_map = _build_group_member_email_map(
confluence_client=confluence_client,
cc_pair_id=cc_pair.id,
)
onyx_groups: list[ExternalUserGroup] = []
all_found_emails = set()

View File

@@ -6,7 +6,6 @@ from onyx.access.models import ExternalAccess
from onyx.connectors.gmail.connector import GmailConnector
from onyx.connectors.interfaces import GenerateSlimDocumentOutput
from onyx.db.models import ConnectorCredentialPair
from onyx.indexing.indexing_heartbeat import IndexingHeartbeatInterface
from onyx.utils.logger import setup_logger
logger = setup_logger()
@@ -15,7 +14,6 @@ logger = setup_logger()
def _get_slim_doc_generator(
cc_pair: ConnectorCredentialPair,
gmail_connector: GmailConnector,
callback: IndexingHeartbeatInterface | None = None,
) -> GenerateSlimDocumentOutput:
current_time = datetime.now(timezone.utc)
start_time = (
@@ -25,14 +23,12 @@ def _get_slim_doc_generator(
)
return gmail_connector.retrieve_all_slim_documents(
start=start_time,
end=current_time.timestamp(),
callback=callback,
start=start_time, end=current_time.timestamp()
)
def gmail_doc_sync(
cc_pair: ConnectorCredentialPair, callback: IndexingHeartbeatInterface | None
cc_pair: ConnectorCredentialPair,
) -> list[DocExternalAccess]:
"""
Adds the external permissions to the documents in postgres
@@ -43,19 +39,11 @@ def gmail_doc_sync(
gmail_connector = GmailConnector(**cc_pair.connector.connector_specific_config)
gmail_connector.load_credentials(cc_pair.credential.credential_json)
slim_doc_generator = _get_slim_doc_generator(
cc_pair, gmail_connector, callback=callback
)
slim_doc_generator = _get_slim_doc_generator(cc_pair, gmail_connector)
document_external_access: list[DocExternalAccess] = []
for slim_doc_batch in slim_doc_generator:
for slim_doc in slim_doc_batch:
if callback:
if callback.should_stop():
raise RuntimeError("gmail_doc_sync: Stop signal detected")
callback.progress("gmail_doc_sync", 1)
if slim_doc.perm_sync_data is None:
logger.warning(f"No permissions found for document {slim_doc.id}")
continue

View File

@@ -10,7 +10,6 @@ from onyx.connectors.google_utils.resources import get_drive_service
from onyx.connectors.interfaces import GenerateSlimDocumentOutput
from onyx.connectors.models import SlimDocument
from onyx.db.models import ConnectorCredentialPair
from onyx.indexing.indexing_heartbeat import IndexingHeartbeatInterface
from onyx.utils.logger import setup_logger
logger = setup_logger()
@@ -21,7 +20,6 @@ _PERMISSION_ID_PERMISSION_MAP: dict[str, dict[str, Any]] = {}
def _get_slim_doc_generator(
cc_pair: ConnectorCredentialPair,
google_drive_connector: GoogleDriveConnector,
callback: IndexingHeartbeatInterface | None = None,
) -> GenerateSlimDocumentOutput:
current_time = datetime.now(timezone.utc)
start_time = (
@@ -31,9 +29,7 @@ def _get_slim_doc_generator(
)
return google_drive_connector.retrieve_all_slim_documents(
start=start_time,
end=current_time.timestamp(),
callback=callback,
start=start_time, end=current_time.timestamp()
)
@@ -46,33 +42,34 @@ def _fetch_permissions_for_permission_ids(
if not permission_info or not doc_id:
return []
# Check cache first for all permission IDs
permissions = [
_PERMISSION_ID_PERMISSION_MAP[pid]
for pid in permission_ids
if pid in _PERMISSION_ID_PERMISSION_MAP
]
# If we found all permissions in cache, return them
if len(permissions) == len(permission_ids):
return permissions
owner_email = permission_info.get("owner_email")
drive_service = get_drive_service(
creds=google_drive_connector.creds,
user_email=(owner_email or google_drive_connector.primary_admin_email),
)
# We continue on 404 or 403 because the document may not exist or the user may not have access to it
# Otherwise, fetch all permissions and update cache
fetched_permissions = execute_paginated_retrieval(
retrieval_function=drive_service.permissions().list,
list_key="permissions",
fileId=doc_id,
fields="permissions(id, emailAddress, type, domain)",
supportsAllDrives=True,
continue_on_404_or_403=True,
)
permissions_for_doc_id = []
# Update cache and return all permissions
for permission in fetched_permissions:
permissions_for_doc_id.append(permission)
_PERMISSION_ID_PERMISSION_MAP[permission["id"]] = permission
@@ -106,13 +103,7 @@ def _get_permissions_from_slim_doc(
user_emails: set[str] = set()
group_emails: set[str] = set()
public = False
skipped_permissions = 0
for permission in permissions_list:
if not permission:
skipped_permissions += 1
continue
permission_type = permission["type"]
if permission_type == "user":
user_emails.add(permission["emailAddress"])
@@ -129,11 +120,6 @@ def _get_permissions_from_slim_doc(
elif permission_type == "anyone":
public = True
if skipped_permissions > 0:
logger.warning(
f"Skipped {skipped_permissions} permissions of {len(permissions_list)} for document {slim_doc.id}"
)
drive_id = permission_info.get("drive_id")
group_ids = group_emails | ({drive_id} if drive_id is not None else set())
@@ -145,7 +131,7 @@ def _get_permissions_from_slim_doc(
def gdrive_doc_sync(
cc_pair: ConnectorCredentialPair, callback: IndexingHeartbeatInterface | None
cc_pair: ConnectorCredentialPair,
) -> list[DocExternalAccess]:
"""
Adds the external permissions to the documents in postgres
@@ -163,12 +149,6 @@ def gdrive_doc_sync(
document_external_accesses = []
for slim_doc_batch in slim_doc_generator:
for slim_doc in slim_doc_batch:
if callback:
if callback.should_stop():
raise RuntimeError("gdrive_doc_sync: Stop signal detected")
callback.progress("gdrive_doc_sync", 1)
ext_access = _get_permissions_from_slim_doc(
google_drive_connector=google_drive_connector,
slim_doc=slim_doc,

View File

@@ -5,9 +5,8 @@ from onyx.access.models import DocExternalAccess
from onyx.access.models import ExternalAccess
from onyx.connectors.slack.connector import get_channels
from onyx.connectors.slack.connector import make_paginated_slack_api_call_w_retries
from onyx.connectors.slack.connector import SlackConnector
from onyx.connectors.slack.connector import SlackPollConnector
from onyx.db.models import ConnectorCredentialPair
from onyx.indexing.indexing_heartbeat import IndexingHeartbeatInterface
from onyx.utils.logger import setup_logger
@@ -15,12 +14,12 @@ logger = setup_logger()
def _get_slack_document_ids_and_channels(
cc_pair: ConnectorCredentialPair, callback: IndexingHeartbeatInterface | None
cc_pair: ConnectorCredentialPair,
) -> dict[str, list[str]]:
slack_connector = SlackConnector(**cc_pair.connector.connector_specific_config)
slack_connector = SlackPollConnector(**cc_pair.connector.connector_specific_config)
slack_connector.load_credentials(cc_pair.credential.credential_json)
slim_doc_generator = slack_connector.retrieve_all_slim_documents(callback=callback)
slim_doc_generator = slack_connector.retrieve_all_slim_documents()
channel_doc_map: dict[str, list[str]] = {}
for doc_metadata_batch in slim_doc_generator:
@@ -32,14 +31,6 @@ def _get_slack_document_ids_and_channels(
channel_doc_map[channel_id] = []
channel_doc_map[channel_id].append(doc_metadata.id)
if callback:
if callback.should_stop():
raise RuntimeError(
"_get_slack_document_ids_and_channels: Stop signal detected"
)
callback.progress("_get_slack_document_ids_and_channels", 1)
return channel_doc_map
@@ -123,7 +114,7 @@ def _fetch_channel_permissions(
def slack_doc_sync(
cc_pair: ConnectorCredentialPair, callback: IndexingHeartbeatInterface | None
cc_pair: ConnectorCredentialPair,
) -> list[DocExternalAccess]:
"""
Adds the external permissions to the documents in postgres
@@ -136,7 +127,7 @@ def slack_doc_sync(
)
user_id_to_email_map = fetch_user_id_to_email_map(slack_client)
channel_doc_map = _get_slack_document_ids_and_channels(
cc_pair=cc_pair, callback=callback
cc_pair=cc_pair,
)
workspace_permissions = _fetch_workspace_permissions(
user_id_to_email_map=user_id_to_email_map,

View File

@@ -15,13 +15,11 @@ from ee.onyx.external_permissions.slack.doc_sync import slack_doc_sync
from onyx.access.models import DocExternalAccess
from onyx.configs.constants import DocumentSource
from onyx.db.models import ConnectorCredentialPair
from onyx.indexing.indexing_heartbeat import IndexingHeartbeatInterface
# Defining the input/output types for the sync functions
DocSyncFuncType = Callable[
[
ConnectorCredentialPair,
IndexingHeartbeatInterface | None,
],
list[DocExternalAccess],
]

View File

@@ -1,9 +1,7 @@
from fastapi import FastAPI
from httpx_oauth.clients.google import GoogleOAuth2
from httpx_oauth.clients.openid import BASE_SCOPES
from httpx_oauth.clients.openid import OpenID
from ee.onyx.configs.app_configs import OIDC_SCOPE_OVERRIDE
from ee.onyx.configs.app_configs import OPENID_CONFIG_URL
from ee.onyx.server.analytics.api import router as analytics_router
from ee.onyx.server.auth_check import check_ee_router_auth
@@ -90,13 +88,7 @@ def get_application() -> FastAPI:
include_auth_router_with_prefix(
application,
create_onyx_oauth_router(
OpenID(
OAUTH_CLIENT_ID,
OAUTH_CLIENT_SECRET,
OPENID_CONFIG_URL,
# BASE_SCOPES is the same as not setting this
base_scopes=OIDC_SCOPE_OVERRIDE or BASE_SCOPES,
),
OpenID(OAUTH_CLIENT_ID, OAUTH_CLIENT_SECRET, OPENID_CONFIG_URL),
auth_backend,
USER_AUTH_SECRET,
associate_by_email=True,

View File

@@ -80,7 +80,7 @@ def oneoff_standard_answers(
def _handle_standard_answers(
message_info: SlackMessageInfo,
receiver_ids: list[str] | None,
slack_channel_config: SlackChannelConfig,
slack_channel_config: SlackChannelConfig | None,
prompt: Prompt | None,
logger: OnyxLoggingAdapter,
client: WebClient,
@@ -94,10 +94,13 @@ def _handle_standard_answers(
Returns True if standard answers are found to match the user's message and therefore,
we still need to respond to the users.
"""
# if no channel config, then no standard answers are configured
if not slack_channel_config:
return False
slack_thread_id = message_info.thread_to_respond
configured_standard_answer_categories = (
slack_channel_config.standard_answer_categories
slack_channel_config.standard_answer_categories if slack_channel_config else []
)
configured_standard_answers = set(
[

View File

@@ -10,7 +10,6 @@ from fastapi import Response
from ee.onyx.auth.users import decode_anonymous_user_jwt_token
from ee.onyx.configs.app_configs import ANONYMOUS_USER_COOKIE_NAME
from onyx.auth.api_key import extract_tenant_from_api_key_header
from onyx.configs.constants import TENANT_ID_COOKIE_NAME
from onyx.db.engine import is_valid_schema_name
from onyx.redis.redis_pool import retrieve_auth_token_data_from_redis
from shared_configs.configs import MULTI_TENANT
@@ -33,7 +32,7 @@ def add_tenant_id_middleware(app: FastAPI, logger: logging.LoggerAdapter) -> Non
return await call_next(request)
except Exception as e:
logger.exception(f"Error in tenant ID middleware: {str(e)}")
logger.error(f"Error in tenant ID middleware: {str(e)}")
raise
@@ -44,12 +43,11 @@ async def _get_tenant_id_from_request(
Attempt to extract tenant_id from:
1) The API key header
2) The Redis-based token (stored in Cookie: fastapiusersauth)
3) Reset token cookie
Fallback: POSTGRES_DEFAULT_SCHEMA
"""
# Check for API key
tenant_id = extract_tenant_from_api_key_header(request)
if tenant_id is not None:
if tenant_id:
return tenant_id
# Check for anonymous user cookie
@@ -64,7 +62,6 @@ async def _get_tenant_id_from_request(
try:
# Look up token data in Redis
token_data = await retrieve_auth_token_data_from_redis(request)
if not token_data:
@@ -88,18 +85,8 @@ async def _get_tenant_id_from_request(
if not is_valid_schema_name(tenant_id):
raise HTTPException(status_code=400, detail="Invalid tenant ID format")
return tenant_id
except Exception as e:
logger.error(f"Unexpected error in _get_tenant_id_from_request: {str(e)}")
raise HTTPException(status_code=500, detail="Internal server error")
finally:
if tenant_id:
return tenant_id
# As a final step, check for explicit tenant_id cookie
tenant_id_cookie = request.cookies.get(TENANT_ID_COOKIE_NAME)
if tenant_id_cookie and is_valid_schema_name(tenant_id_cookie):
return tenant_id_cookie
# If we've reached this point, return the default schema
return POSTGRES_DEFAULT_SCHEMA

View File

@@ -36,12 +36,12 @@ from onyx.connectors.google_utils.shared_constants import (
GoogleOAuthAuthenticationMethod,
)
from onyx.db.credentials import create_credential
from onyx.db.engine import get_current_tenant_id
from onyx.db.engine import get_session
from onyx.db.models import User
from onyx.redis.redis_pool import get_redis_client
from onyx.server.documents.models import CredentialBase
from onyx.utils.logger import setup_logger
from shared_configs.contextvars import get_current_tenant_id
logger = setup_logger()
@@ -271,12 +271,12 @@ def prepare_authorization_request(
connector: DocumentSource,
redirect_on_success: str | None,
user: User = Depends(current_user),
tenant_id: str | None = Depends(get_current_tenant_id),
) -> JSONResponse:
"""Used by the frontend to generate the url for the user's browser during auth request.
Example: https://www.oauth.com/oauth2-servers/authorization/the-authorization-request/
"""
tenant_id = get_current_tenant_id()
# create random oauth state param for security and to retrieve user data later
oauth_uuid = uuid.uuid4()
@@ -286,7 +286,6 @@ def prepare_authorization_request(
oauth_state = (
base64.urlsafe_b64encode(oauth_uuid.bytes).rstrip(b"=").decode("utf-8")
)
session: str
if connector == DocumentSource.SLACK:
oauth_url = SlackOAuth.generate_oauth_url(oauth_state)
@@ -329,6 +328,7 @@ def handle_slack_oauth_callback(
state: str,
user: User = Depends(current_user),
db_session: Session = Depends(get_session),
tenant_id: str | None = Depends(get_current_tenant_id),
) -> JSONResponse:
if not SlackOAuth.CLIENT_ID or not SlackOAuth.CLIENT_SECRET:
raise HTTPException(
@@ -336,7 +336,7 @@ def handle_slack_oauth_callback(
detail="Slack client ID or client secret is not configured.",
)
r = get_redis_client()
r = get_redis_client(tenant_id=tenant_id)
# recover the state
padded_state = state + "=" * (
@@ -522,6 +522,7 @@ def handle_google_drive_oauth_callback(
state: str,
user: User = Depends(current_user),
db_session: Session = Depends(get_session),
tenant_id: str | None = Depends(get_current_tenant_id),
) -> JSONResponse:
if not GoogleDriveOAuth.CLIENT_ID or not GoogleDriveOAuth.CLIENT_SECRET:
raise HTTPException(
@@ -529,7 +530,7 @@ def handle_google_drive_oauth_callback(
detail="Google Drive client ID or client secret is not configured.",
)
r = get_redis_client()
r = get_redis_client(tenant_id=tenant_id)
# recover the state
padded_state = state + "=" * (
@@ -553,7 +554,6 @@ def handle_google_drive_oauth_callback(
)
session_json = session_json_bytes.decode("utf-8")
session: GoogleDriveOAuth.OAuthSession
try:
session = GoogleDriveOAuth.parse_session(session_json)

View File

@@ -179,7 +179,6 @@ def handle_simplified_chat_message(
chunks_below=0,
full_doc=chat_message_req.full_doc,
structured_response_format=chat_message_req.structured_response_format,
use_agentic_search=chat_message_req.use_agentic_search,
)
packets = stream_chat_message_objects(
@@ -302,7 +301,6 @@ def handle_send_message_simple_with_history(
chunks_below=0,
full_doc=req.full_doc,
structured_response_format=req.structured_response_format,
use_agentic_search=req.use_agentic_search,
)
packets = stream_chat_message_objects(

View File

@@ -57,9 +57,6 @@ class BasicCreateChatMessageRequest(ChunkContext):
# https://platform.openai.com/docs/guides/structured-outputs/introduction
structured_response_format: dict | None = None
# If True, uses agentic search instead of basic search
use_agentic_search: bool = False
class BasicCreateChatMessageWithHistoryRequest(ChunkContext):
# Last element is the new query. All previous elements are historical context
@@ -74,8 +71,6 @@ class BasicCreateChatMessageWithHistoryRequest(ChunkContext):
# only works if using an OpenAI model. See the following for more details:
# https://platform.openai.com/docs/guides/structured-outputs/introduction
structured_response_format: dict | None = None
# If True, uses agentic search instead of basic search
use_agentic_search: bool = False
class SimpleDoc(BaseModel):
@@ -125,12 +120,9 @@ class OneShotQARequest(ChunkContext):
# will also disable Thread-based Rewording if specified
query_override: str | None = None
# If True, skips generating an AI response to the search query
# If True, skips generative an AI response to the search query
skip_gen_ai_answer_generation: bool = False
# If True, uses agentic search instead of basic search
use_agentic_search: bool = False
@model_validator(mode="after")
def check_persona_fields(self) -> "OneShotQARequest":
if self.persona_override_config is None and self.persona_id is None:

View File

@@ -83,7 +83,6 @@ def handle_search_request(
user=user,
llm=llm,
fast_llm=fast_llm,
skip_query_analysis=False,
db_session=db_session,
bypass_acl=False,
)
@@ -197,8 +196,6 @@ def get_answer_stream(
retrieval_details=query_request.retrieval_options,
rerank_settings=query_request.rerank_settings,
db_session=db_session,
use_agentic_search=query_request.use_agentic_search,
skip_gen_ai_answer_generation=query_request.skip_gen_ai_answer_generation,
)
packets = stream_chat_message_objects(

View File

@@ -13,7 +13,7 @@ from sqlalchemy import select
from sqlalchemy.orm import Session
from onyx.db.api_key import is_api_key_email_address
from onyx.db.engine import get_session_with_current_tenant
from onyx.db.engine import get_session_with_tenant
from onyx.db.models import ChatMessage
from onyx.db.models import ChatSession
from onyx.db.models import TokenRateLimit
@@ -28,21 +28,21 @@ from onyx.server.query_and_chat.token_limit import _user_is_rate_limited_by_glob
from onyx.utils.threadpool_concurrency import run_functions_tuples_in_parallel
def _check_token_rate_limits(user: User | None) -> None:
def _check_token_rate_limits(user: User | None, tenant_id: str | None) -> None:
if user is None:
# Unauthenticated users are only rate limited by global settings
_user_is_rate_limited_by_global()
_user_is_rate_limited_by_global(tenant_id)
elif is_api_key_email_address(user.email):
# API keys are only rate limited by global settings
_user_is_rate_limited_by_global()
_user_is_rate_limited_by_global(tenant_id)
else:
run_functions_tuples_in_parallel(
[
(_user_is_rate_limited, (user.id,)),
(_user_is_rate_limited_by_group, (user.id,)),
(_user_is_rate_limited_by_global, ()),
(_user_is_rate_limited, (user.id, tenant_id)),
(_user_is_rate_limited_by_group, (user.id, tenant_id)),
(_user_is_rate_limited_by_global, (tenant_id,)),
]
)
@@ -52,8 +52,8 @@ User rate limits
"""
def _user_is_rate_limited(user_id: UUID) -> None:
with get_session_with_current_tenant() as db_session:
def _user_is_rate_limited(user_id: UUID, tenant_id: str | None) -> None:
with get_session_with_tenant(tenant_id) as db_session:
user_rate_limits = fetch_all_user_token_rate_limits(
db_session=db_session, enabled_only=True, ordered=False
)
@@ -93,8 +93,8 @@ User Group rate limits
"""
def _user_is_rate_limited_by_group(user_id: UUID) -> None:
with get_session_with_current_tenant() as db_session:
def _user_is_rate_limited_by_group(user_id: UUID, tenant_id: str | None) -> None:
with get_session_with_tenant(tenant_id) as db_session:
group_rate_limits = _fetch_all_user_group_rate_limits(user_id, db_session)
if group_rate_limits:

View File

@@ -2,7 +2,6 @@ import csv
import io
from datetime import datetime
from datetime import timezone
from http import HTTPStatus
from uuid import UUID
from fastapi import APIRouter
@@ -22,10 +21,8 @@ from ee.onyx.server.query_history.models import QuestionAnswerPairSnapshot
from onyx.auth.users import current_admin_user
from onyx.auth.users import get_display_email
from onyx.chat.chat_utils import create_chat_chain
from onyx.configs.app_configs import ONYX_QUERY_HISTORY_TYPE
from onyx.configs.constants import MessageType
from onyx.configs.constants import QAFeedbackType
from onyx.configs.constants import QueryHistoryType
from onyx.configs.constants import SessionType
from onyx.db.chat import get_chat_session_by_id
from onyx.db.chat import get_chat_sessions_by_user
@@ -38,8 +35,6 @@ from onyx.server.query_and_chat.models import ChatSessionsResponse
router = APIRouter()
ONYX_ANONYMIZED_EMAIL = "anonymous@anonymous.invalid"
def fetch_and_process_chat_session_history(
db_session: Session,
@@ -112,17 +107,6 @@ def get_user_chat_sessions(
_: User | None = Depends(current_admin_user),
db_session: Session = Depends(get_session),
) -> ChatSessionsResponse:
# we specifically don't allow this endpoint if "anonymized" since
# this is a direct query on the user id
if ONYX_QUERY_HISTORY_TYPE in [
QueryHistoryType.DISABLED,
QueryHistoryType.ANONYMIZED,
]:
raise HTTPException(
status_code=HTTPStatus.FORBIDDEN,
detail="Per user query history has been disabled by the administrator.",
)
try:
chat_sessions = get_chat_sessions_by_user(
user_id=user_id, deleted=False, db_session=db_session, limit=0
@@ -157,12 +141,6 @@ def get_chat_session_history(
_: User | None = Depends(current_admin_user),
db_session: Session = Depends(get_session),
) -> PaginatedReturn[ChatSessionMinimal]:
if ONYX_QUERY_HISTORY_TYPE == QueryHistoryType.DISABLED:
raise HTTPException(
status_code=HTTPStatus.FORBIDDEN,
detail="Query history has been disabled by the administrator.",
)
page_of_chat_sessions = get_page_of_chat_sessions(
page_num=page_num,
page_size=page_size,
@@ -179,16 +157,11 @@ def get_chat_session_history(
feedback_filter=feedback_type,
)
minimal_chat_sessions: list[ChatSessionMinimal] = []
for chat_session in page_of_chat_sessions:
minimal_chat_session = ChatSessionMinimal.from_chat_session(chat_session)
if ONYX_QUERY_HISTORY_TYPE == QueryHistoryType.ANONYMIZED:
minimal_chat_session.user_email = ONYX_ANONYMIZED_EMAIL
minimal_chat_sessions.append(minimal_chat_session)
return PaginatedReturn(
items=minimal_chat_sessions,
items=[
ChatSessionMinimal.from_chat_session(chat_session)
for chat_session in page_of_chat_sessions
],
total_items=total_filtered_chat_sessions_count,
)
@@ -199,12 +172,6 @@ def get_chat_session_admin(
_: User | None = Depends(current_admin_user),
db_session: Session = Depends(get_session),
) -> ChatSessionSnapshot:
if ONYX_QUERY_HISTORY_TYPE == QueryHistoryType.DISABLED:
raise HTTPException(
status_code=HTTPStatus.FORBIDDEN,
detail="Query history has been disabled by the administrator.",
)
try:
chat_session = get_chat_session_by_id(
chat_session_id=chat_session_id,
@@ -226,9 +193,6 @@ def get_chat_session_admin(
f"Could not create snapshot for chat session with id '{chat_session_id}'",
)
if ONYX_QUERY_HISTORY_TYPE == QueryHistoryType.ANONYMIZED:
snapshot.user_email = ONYX_ANONYMIZED_EMAIL
return snapshot
@@ -239,12 +203,6 @@ def get_query_history_as_csv(
end: datetime | None = None,
db_session: Session = Depends(get_session),
) -> StreamingResponse:
if ONYX_QUERY_HISTORY_TYPE == QueryHistoryType.DISABLED:
raise HTTPException(
status_code=HTTPStatus.FORBIDDEN,
detail="Query history has been disabled by the administrator.",
)
complete_chat_session_history = fetch_and_process_chat_session_history(
db_session=db_session,
start=start or datetime.fromtimestamp(0, tz=timezone.utc),
@@ -255,9 +213,6 @@ def get_query_history_as_csv(
question_answer_pairs: list[QuestionAnswerPairSnapshot] = []
for chat_session_snapshot in complete_chat_session_history:
if ONYX_QUERY_HISTORY_TYPE == QueryHistoryType.ANONYMIZED:
chat_session_snapshot.user_email = ONYX_ANONYMIZED_EMAIL
question_answer_pairs.extend(
QuestionAnswerPairSnapshot.from_chat_session_snapshot(chat_session_snapshot)
)

View File

@@ -18,16 +18,11 @@ from ee.onyx.server.tenants.anonymous_user_path import (
from ee.onyx.server.tenants.anonymous_user_path import modify_anonymous_user_path
from ee.onyx.server.tenants.anonymous_user_path import validate_anonymous_user_path
from ee.onyx.server.tenants.billing import fetch_billing_information
from ee.onyx.server.tenants.billing import fetch_stripe_checkout_session
from ee.onyx.server.tenants.billing import fetch_tenant_stripe_information
from ee.onyx.server.tenants.models import AnonymousUserPath
from ee.onyx.server.tenants.models import BillingInformation
from ee.onyx.server.tenants.models import ImpersonateRequest
from ee.onyx.server.tenants.models import ProductGatingRequest
from ee.onyx.server.tenants.models import ProductGatingResponse
from ee.onyx.server.tenants.models import SubscriptionSessionResponse
from ee.onyx.server.tenants.models import SubscriptionStatusResponse
from ee.onyx.server.tenants.product_gating import store_product_gating
from ee.onyx.server.tenants.provisioning import delete_user_from_control_plane
from ee.onyx.server.tenants.user_mapping import get_tenant_id_for_email
from ee.onyx.server.tenants.user_mapping import remove_all_users_from_tenant
@@ -39,17 +34,18 @@ from onyx.auth.users import get_redis_strategy
from onyx.auth.users import optional_user
from onyx.auth.users import User
from onyx.configs.app_configs import WEB_DOMAIN
from onyx.configs.constants import FASTAPI_USERS_AUTH_COOKIE_NAME
from onyx.db.auth import get_user_count
from onyx.db.engine import get_current_tenant_id
from onyx.db.engine import get_session
from onyx.db.engine import get_session_with_shared_schema
from onyx.db.engine import get_session_with_tenant
from onyx.db.notification import create_notification
from onyx.db.users import delete_user_from_db
from onyx.db.users import get_user_by_email
from onyx.server.manage.models import UserByEmail
from onyx.server.settings.store import load_settings
from onyx.server.settings.store import store_settings
from onyx.utils.logger import setup_logger
from shared_configs.contextvars import CURRENT_TENANT_ID_CONTEXTVAR
from shared_configs.contextvars import get_current_tenant_id
stripe.api_key = STRIPE_SECRET_KEY
logger = setup_logger()
@@ -58,14 +54,13 @@ router = APIRouter(prefix="/tenants")
@router.get("/anonymous-user-path")
async def get_anonymous_user_path_api(
tenant_id: str | None = Depends(get_current_tenant_id),
_: User | None = Depends(current_admin_user),
) -> AnonymousUserPath:
tenant_id = get_current_tenant_id()
if tenant_id is None:
raise HTTPException(status_code=404, detail="Tenant not found")
with get_session_with_shared_schema() as db_session:
with get_session_with_tenant(tenant_id=None) as db_session:
current_path = get_anonymous_user_path(tenant_id, db_session)
return AnonymousUserPath(anonymous_user_path=current_path)
@@ -74,15 +69,15 @@ async def get_anonymous_user_path_api(
@router.post("/anonymous-user-path")
async def set_anonymous_user_path_api(
anonymous_user_path: str,
tenant_id: str = Depends(get_current_tenant_id),
_: User | None = Depends(current_admin_user),
) -> None:
tenant_id = get_current_tenant_id()
try:
validate_anonymous_user_path(anonymous_user_path)
except ValueError as e:
raise HTTPException(status_code=400, detail=str(e))
with get_session_with_shared_schema() as db_session:
with get_session_with_tenant(tenant_id=None) as db_session:
try:
modify_anonymous_user_path(tenant_id, anonymous_user_path, db_session)
except IntegrityError:
@@ -103,7 +98,7 @@ async def login_as_anonymous_user(
anonymous_user_path: str,
_: User | None = Depends(optional_user),
) -> Response:
with get_session_with_shared_schema() as db_session:
with get_session_with_tenant(tenant_id=None) as db_session:
tenant_id = get_tenant_id_for_anonymous_user_path(
anonymous_user_path, db_session
)
@@ -116,7 +111,6 @@ async def login_as_anonymous_user(
token = generate_anonymous_user_jwt_token(tenant_id)
response = Response()
response.delete_cookie(FASTAPI_USERS_AUTH_COOKIE_NAME)
response.set_cookie(
key=ANONYMOUS_USER_COOKIE_NAME,
value=token,
@@ -130,48 +124,52 @@ async def login_as_anonymous_user(
@router.post("/product-gating")
def gate_product(
product_gating_request: ProductGatingRequest, _: None = Depends(control_plane_dep)
) -> ProductGatingResponse:
) -> None:
"""
Gating the product means that the product is not available to the tenant.
They will be directed to the billing page.
We gate the product when their subscription has ended.
We gate the product when
1) User has ended free trial without adding payment method
2) User's card has declined
"""
try:
store_product_gating(
product_gating_request.tenant_id, product_gating_request.application_status
)
return ProductGatingResponse(updated=True, error=None)
tenant_id = product_gating_request.tenant_id
token = CURRENT_TENANT_ID_CONTEXTVAR.set(tenant_id)
except Exception as e:
logger.exception("Failed to gate product")
return ProductGatingResponse(updated=False, error=str(e))
settings = load_settings()
settings.product_gating = product_gating_request.product_gating
store_settings(settings)
if product_gating_request.notification:
with get_session_with_tenant(tenant_id) as db_session:
create_notification(None, product_gating_request.notification, db_session)
if token is not None:
CURRENT_TENANT_ID_CONTEXTVAR.reset(token)
@router.get("/billing-information")
@router.get("/billing-information", response_model=BillingInformation)
async def billing_information(
_: User = Depends(current_admin_user),
) -> BillingInformation | SubscriptionStatusResponse:
) -> BillingInformation:
logger.info("Fetching billing information")
tenant_id = get_current_tenant_id()
return fetch_billing_information(tenant_id)
return BillingInformation(
**fetch_billing_information(CURRENT_TENANT_ID_CONTEXTVAR.get())
)
@router.post("/create-customer-portal-session")
async def create_customer_portal_session(
_: User = Depends(current_admin_user),
) -> dict:
tenant_id = get_current_tenant_id()
async def create_customer_portal_session(_: User = Depends(current_admin_user)) -> dict:
try:
# Fetch tenant_id and current tenant's information
tenant_id = CURRENT_TENANT_ID_CONTEXTVAR.get()
stripe_info = fetch_tenant_stripe_information(tenant_id)
stripe_customer_id = stripe_info.get("stripe_customer_id")
if not stripe_customer_id:
raise HTTPException(status_code=400, detail="Stripe customer ID not found")
logger.info(stripe_customer_id)
portal_session = stripe.billing_portal.Session.create(
customer=stripe_customer_id,
return_url=f"{WEB_DOMAIN}/admin/billing",
return_url=f"{WEB_DOMAIN}/admin/cloud-settings",
)
logger.info(portal_session)
return {"url": portal_session.url}
@@ -180,22 +178,6 @@ async def create_customer_portal_session(
raise HTTPException(status_code=500, detail=str(e))
@router.post("/create-subscription-session")
async def create_subscription_session(
_: User = Depends(current_admin_user),
) -> SubscriptionSessionResponse:
try:
tenant_id = CURRENT_TENANT_ID_CONTEXTVAR.get()
if not tenant_id:
raise HTTPException(status_code=400, detail="Tenant ID not found")
session_id = fetch_stripe_checkout_session(tenant_id)
return SubscriptionSessionResponse(sessionId=session_id)
except Exception as e:
logger.exception("Failed to create resubscription session")
raise HTTPException(status_code=500, detail=str(e))
@router.post("/impersonate")
async def impersonate_user(
impersonate_request: ImpersonateRequest,
@@ -204,7 +186,7 @@ async def impersonate_user(
"""Allows a cloud superuser to impersonate another user by generating an impersonation JWT token"""
tenant_id = get_tenant_id_for_email(impersonate_request.email)
with get_session_with_tenant(tenant_id=tenant_id) as tenant_session:
with get_session_with_tenant(tenant_id) as tenant_session:
user_to_impersonate = get_user_by_email(
impersonate_request.email, tenant_session
)
@@ -228,9 +210,8 @@ async def leave_organization(
user_email: UserByEmail,
current_user: User | None = Depends(current_admin_user),
db_session: Session = Depends(get_session),
tenant_id: str = Depends(get_current_tenant_id),
) -> None:
tenant_id = get_current_tenant_id()
if current_user is None or current_user.email != user_email.user_email:
raise HTTPException(
status_code=403, detail="You can only leave the organization as yourself"

View File

@@ -6,7 +6,6 @@ import stripe
from ee.onyx.configs.app_configs import STRIPE_PRICE_ID
from ee.onyx.configs.app_configs import STRIPE_SECRET_KEY
from ee.onyx.server.tenants.access import generate_data_plane_token
from ee.onyx.server.tenants.models import BillingInformation
from onyx.configs.app_configs import CONTROL_PLANE_API_BASE_URL
from onyx.utils.logger import setup_logger
@@ -15,19 +14,6 @@ stripe.api_key = STRIPE_SECRET_KEY
logger = setup_logger()
def fetch_stripe_checkout_session(tenant_id: str) -> str:
token = generate_data_plane_token()
headers = {
"Authorization": f"Bearer {token}",
"Content-Type": "application/json",
}
url = f"{CONTROL_PLANE_API_BASE_URL}/create-checkout-session"
params = {"tenant_id": tenant_id}
response = requests.post(url, headers=headers, params=params)
response.raise_for_status()
return response.json()["sessionId"]
def fetch_tenant_stripe_information(tenant_id: str) -> dict:
token = generate_data_plane_token()
headers = {
@@ -41,7 +27,7 @@ def fetch_tenant_stripe_information(tenant_id: str) -> dict:
return response.json()
def fetch_billing_information(tenant_id: str) -> BillingInformation:
def fetch_billing_information(tenant_id: str) -> dict:
logger.info("Fetching billing information")
token = generate_data_plane_token()
headers = {
@@ -52,7 +38,7 @@ def fetch_billing_information(tenant_id: str) -> BillingInformation:
params = {"tenant_id": tenant_id}
response = requests.get(url, headers=headers, params=params)
response.raise_for_status()
billing_info = BillingInformation(**response.json())
billing_info = response.json()
return billing_info

View File

@@ -1,8 +1,7 @@
from datetime import datetime
from pydantic import BaseModel
from onyx.server.settings.models import ApplicationStatus
from onyx.configs.constants import NotificationType
from onyx.server.settings.models import GatingType
class CheckoutSessionCreationRequest(BaseModel):
@@ -16,24 +15,15 @@ class CreateTenantRequest(BaseModel):
class ProductGatingRequest(BaseModel):
tenant_id: str
application_status: ApplicationStatus
class SubscriptionStatusResponse(BaseModel):
subscribed: bool
product_gating: GatingType
notification: NotificationType | None = None
class BillingInformation(BaseModel):
stripe_subscription_id: str
status: str
current_period_start: datetime
current_period_end: datetime
number_of_seats: int
cancel_at_period_end: bool
canceled_at: datetime | None
trial_start: datetime | None
trial_end: datetime | None
seats: int
subscription_status: str
billing_start: str
billing_end: str
payment_method_enabled: bool
@@ -58,12 +48,3 @@ class TenantDeletionPayload(BaseModel):
class AnonymousUserPath(BaseModel):
anonymous_user_path: str | None
class ProductGatingResponse(BaseModel):
updated: bool
error: str | None
class SubscriptionSessionResponse(BaseModel):
sessionId: str

View File

@@ -1,51 +0,0 @@
from typing import cast
from ee.onyx.configs.app_configs import GATED_TENANTS_KEY
from onyx.configs.constants import ONYX_CLOUD_TENANT_ID
from onyx.redis.redis_pool import get_redis_client
from onyx.redis.redis_pool import get_redis_replica_client
from onyx.server.settings.models import ApplicationStatus
from onyx.server.settings.store import load_settings
from onyx.server.settings.store import store_settings
from onyx.setup import setup_logger
from shared_configs.contextvars import CURRENT_TENANT_ID_CONTEXTVAR
logger = setup_logger()
def update_tenant_gating(tenant_id: str, status: ApplicationStatus) -> None:
redis_client = get_redis_client(tenant_id=ONYX_CLOUD_TENANT_ID)
# Store the full status
status_key = f"tenant:{tenant_id}:status"
redis_client.set(status_key, status.value)
# Maintain the GATED_ACCESS set
if status == ApplicationStatus.GATED_ACCESS:
redis_client.sadd(GATED_TENANTS_KEY, tenant_id)
else:
redis_client.srem(GATED_TENANTS_KEY, tenant_id)
def store_product_gating(tenant_id: str, application_status: ApplicationStatus) -> None:
try:
token = CURRENT_TENANT_ID_CONTEXTVAR.set(tenant_id)
settings = load_settings()
settings.application_status = application_status
store_settings(settings)
# Store gated tenant information in Redis
update_tenant_gating(tenant_id, application_status)
if token is not None:
CURRENT_TENANT_ID_CONTEXTVAR.reset(token)
except Exception:
logger.exception("Failed to gate product")
raise
def get_gated_tenants() -> set[str]:
redis_client = get_redis_replica_client(tenant_id=ONYX_CLOUD_TENANT_ID)
return cast(set[str], redis_client.smembers(GATED_TENANTS_KEY))

View File

@@ -24,7 +24,6 @@ from ee.onyx.server.tenants.user_mapping import get_tenant_id_for_email
from ee.onyx.server.tenants.user_mapping import user_owns_a_tenant
from onyx.auth.users import exceptions
from onyx.configs.app_configs import CONTROL_PLANE_API_BASE_URL
from onyx.configs.app_configs import DEV_MODE
from onyx.configs.constants import MilestoneRecordType
from onyx.db.engine import get_session_with_tenant
from onyx.db.engine import get_sqlalchemy_engine
@@ -86,8 +85,7 @@ async def create_tenant(email: str, referral_source: str | None = None) -> str:
# Provision tenant on data plane
await provision_tenant(tenant_id, email)
# Notify control plane
if not DEV_MODE:
await notify_control_plane(tenant_id, email, referral_source)
await notify_control_plane(tenant_id, email, referral_source)
except Exception as e:
logger.error(f"Tenant provisioning failed: {e}")
await rollback_tenant_provisioning(tenant_id)
@@ -118,7 +116,7 @@ async def provision_tenant(tenant_id: str, email: str) -> None:
# Await the Alembic migrations
await asyncio.to_thread(run_alembic_migrations, tenant_id)
with get_session_with_tenant(tenant_id=tenant_id) as db_session:
with get_session_with_tenant(tenant_id) as db_session:
configure_default_api_keys(db_session)
current_search_settings = (
@@ -134,7 +132,7 @@ async def provision_tenant(tenant_id: str, email: str) -> None:
add_users_to_tenant([email], tenant_id)
with get_session_with_tenant(tenant_id=tenant_id) as db_session:
with get_session_with_tenant(tenant_id) as db_session:
create_milestone_and_report(
user=None,
distinct_id=tenant_id,
@@ -224,7 +222,7 @@ def configure_default_api_keys(db_session: Session) -> None:
name="Anthropic",
provider=ANTHROPIC_PROVIDER_NAME,
api_key=ANTHROPIC_DEFAULT_API_KEY,
default_model_name="claude-3-7-sonnet-20250219",
default_model_name="claude-3-5-sonnet-20241022",
fast_default_model_name="claude-3-5-sonnet-20241022",
model_names=ANTHROPIC_MODEL_NAMES,
)

View File

@@ -28,7 +28,7 @@ def get_tenant_id_for_email(email: str) -> str:
def user_owns_a_tenant(email: str) -> bool:
with get_session_with_tenant(tenant_id=POSTGRES_DEFAULT_SCHEMA) as db_session:
with get_session_with_tenant(POSTGRES_DEFAULT_SCHEMA) as db_session:
result = (
db_session.query(UserTenantMapping)
.filter(UserTenantMapping.email == email)
@@ -38,7 +38,7 @@ def user_owns_a_tenant(email: str) -> bool:
def add_users_to_tenant(emails: list[str], tenant_id: str) -> None:
with get_session_with_tenant(tenant_id=POSTGRES_DEFAULT_SCHEMA) as db_session:
with get_session_with_tenant(POSTGRES_DEFAULT_SCHEMA) as db_session:
try:
for email in emails:
db_session.add(UserTenantMapping(email=email, tenant_id=tenant_id))
@@ -48,7 +48,7 @@ def add_users_to_tenant(emails: list[str], tenant_id: str) -> None:
def remove_users_from_tenant(emails: list[str], tenant_id: str) -> None:
with get_session_with_tenant(tenant_id=POSTGRES_DEFAULT_SCHEMA) as db_session:
with get_session_with_tenant(POSTGRES_DEFAULT_SCHEMA) as db_session:
try:
mappings_to_delete = (
db_session.query(UserTenantMapping)
@@ -71,7 +71,7 @@ def remove_users_from_tenant(emails: list[str], tenant_id: str) -> None:
def remove_all_users_from_tenant(tenant_id: str) -> None:
with get_session_with_tenant(tenant_id=POSTGRES_DEFAULT_SCHEMA) as db_session:
with get_session_with_tenant(POSTGRES_DEFAULT_SCHEMA) as db_session:
db_session.query(UserTenantMapping).filter(
UserTenantMapping.tenant_id == tenant_id
).delete()

View File

@@ -58,7 +58,6 @@ class UserGroup(BaseModel):
credential=CredentialSnapshot.from_credential_db_model(
cc_pair_relationship.cc_pair.credential
),
access_type=cc_pair_relationship.cc_pair.access_type,
)
for cc_pair_relationship in user_group_model.cc_pair_relationships
if cc_pair_relationship.is_current

View File

@@ -28,9 +28,3 @@ class EmbeddingModelTextType:
@staticmethod
def get_type(provider: EmbeddingProvider, text_type: EmbedTextType) -> str:
return EmbeddingModelTextType.PROVIDER_TEXT_TYPE_MAP[provider][text_type]
class GPUStatus:
CUDA = "cuda"
MAC_MPS = "mps"
NONE = "none"

View File

@@ -12,7 +12,6 @@ import voyageai # type: ignore
from cohere import AsyncClient as CohereAsyncClient
from fastapi import APIRouter
from fastapi import HTTPException
from fastapi import Request
from google.oauth2 import service_account # type: ignore
from litellm import aembedding
from litellm.exceptions import RateLimitError
@@ -98,17 +97,12 @@ class CloudEmbedding:
return final_embeddings
except Exception as e:
error_string = (
f"Exception embedding text with OpenAI - {type(e)}: "
f"Model: {model} "
f"Provider: {self.provider} "
f"Exception: {e}"
f"Error embedding text with OpenAI: {str(e)} \n"
f"Model: {model} \n"
f"Provider: {self.provider} \n"
f"Texts: {texts}"
)
logger.error(error_string)
# only log text when it's not an authentication error.
if not isinstance(e, openai.AuthenticationError):
logger.debug(f"Exception texts: {texts}")
raise RuntimeError(error_string)
async def _embed_cohere(
@@ -326,7 +320,6 @@ async def embed_text(
prefix: str | None,
api_url: str | None,
api_version: str | None,
gpu_type: str = "UNKNOWN",
) -> list[Embedding]:
if not all(texts):
logger.error("Empty strings provided for embedding")
@@ -380,11 +373,8 @@ async def embed_text(
elapsed = time.monotonic() - start
logger.info(
f"event=embedding_provider "
f"texts={len(texts)} "
f"chars={total_chars} "
f"provider={provider_type} "
f"elapsed={elapsed:.2f}"
f"Successfully embedded {len(texts)} texts with {total_chars} total characters "
f"with provider {provider_type} in {elapsed:.2f}"
)
elif model_name is not None:
logger.info(
@@ -413,14 +403,6 @@ async def embed_text(
f"Successfully embedded {len(texts)} texts with {total_chars} total characters "
f"with local model {model_name} in {elapsed:.2f}"
)
logger.info(
f"event=embedding_model "
f"texts={len(texts)} "
f"chars={total_chars} "
f"model={model_name} "
f"gpu={gpu_type} "
f"elapsed={elapsed:.2f}"
)
else:
logger.error("Neither model name nor provider specified for embedding")
raise ValueError(
@@ -473,15 +455,8 @@ async def litellm_rerank(
@router.post("/bi-encoder-embed")
async def route_bi_encoder_embed(
request: Request,
embed_request: EmbedRequest,
) -> EmbedResponse:
return await process_embed_request(embed_request, request.app.state.gpu_type)
async def process_embed_request(
embed_request: EmbedRequest, gpu_type: str = "UNKNOWN"
embed_request: EmbedRequest,
) -> EmbedResponse:
if not embed_request.texts:
raise HTTPException(status_code=400, detail="No texts to be embedded")
@@ -509,7 +484,6 @@ async def process_embed_request(
api_url=embed_request.api_url,
api_version=embed_request.api_version,
prefix=prefix,
gpu_type=gpu_type,
)
return EmbedResponse(embeddings=embeddings)
except RateLimitError as e:

View File

@@ -16,7 +16,6 @@ from model_server.custom_models import router as custom_models_router
from model_server.custom_models import warm_up_intent_model
from model_server.encoders import router as encoders_router
from model_server.management_endpoints import router as management_router
from model_server.utils import get_gpu_type
from onyx import __version__
from onyx.utils.logger import setup_logger
from shared_configs.configs import INDEXING_ONLY
@@ -59,10 +58,12 @@ def _move_files_recursively(source: Path, dest: Path, overwrite: bool = False) -
@asynccontextmanager
async def lifespan(app: FastAPI) -> AsyncGenerator:
gpu_type = get_gpu_type()
logger.notice(f"Torch GPU Detection: gpu_type={gpu_type}")
app.state.gpu_type = gpu_type
if torch.cuda.is_available():
logger.notice("CUDA GPU is available")
elif torch.backends.mps.is_available():
logger.notice("Mac MPS is available")
else:
logger.notice("GPU is not available, using CPU")
if TEMP_HF_CACHE_PATH.is_dir():
logger.notice("Moving contents of temp_huggingface to huggingface cache.")

View File

@@ -1,9 +1,7 @@
import torch
from fastapi import APIRouter
from fastapi import Response
from model_server.constants import GPUStatus
from model_server.utils import get_gpu_type
router = APIRouter(prefix="/api")
@@ -13,7 +11,10 @@ async def healthcheck() -> Response:
@router.get("/gpu-status")
async def route_gpu_status() -> dict[str, bool | str]:
gpu_type = get_gpu_type()
gpu_available = gpu_type != GPUStatus.NONE
return {"gpu_available": gpu_available, "type": gpu_type}
async def gpu_status() -> dict[str, bool | str]:
if torch.cuda.is_available():
return {"gpu_available": True, "type": "cuda"}
elif torch.backends.mps.is_available():
return {"gpu_available": True, "type": "mps"}
else:
return {"gpu_available": False, "type": "none"}

View File

@@ -8,9 +8,6 @@ from typing import Any
from typing import cast
from typing import TypeVar
import torch
from model_server.constants import GPUStatus
from onyx.utils.logger import setup_logger
logger = setup_logger()
@@ -61,12 +58,3 @@ def simple_log_function_time(
return cast(F, wrapped_sync_func)
return decorator
def get_gpu_type() -> str:
if torch.cuda.is_available():
return GPUStatus.CUDA
if torch.backends.mps.is_available():
return GPUStatus.MAC_MPS
return GPUStatus.NONE

View File

@@ -1,97 +0,0 @@
from langgraph.graph import END
from langgraph.graph import START
from langgraph.graph import StateGraph
from onyx.agents.agent_search.basic.states import BasicInput
from onyx.agents.agent_search.basic.states import BasicOutput
from onyx.agents.agent_search.basic.states import BasicState
from onyx.agents.agent_search.orchestration.nodes.call_tool import call_tool
from onyx.agents.agent_search.orchestration.nodes.choose_tool import choose_tool
from onyx.agents.agent_search.orchestration.nodes.prepare_tool_input import (
prepare_tool_input,
)
from onyx.agents.agent_search.orchestration.nodes.use_tool_response import (
basic_use_tool_response,
)
from onyx.utils.logger import setup_logger
logger = setup_logger()
def basic_graph_builder() -> StateGraph:
graph = StateGraph(
state_schema=BasicState,
input=BasicInput,
output=BasicOutput,
)
### Add nodes ###
graph.add_node(
node="prepare_tool_input",
action=prepare_tool_input,
)
graph.add_node(
node="choose_tool",
action=choose_tool,
)
graph.add_node(
node="call_tool",
action=call_tool,
)
graph.add_node(
node="basic_use_tool_response",
action=basic_use_tool_response,
)
### Add edges ###
graph.add_edge(start_key=START, end_key="prepare_tool_input")
graph.add_edge(start_key="prepare_tool_input", end_key="choose_tool")
graph.add_conditional_edges("choose_tool", should_continue, ["call_tool", END])
graph.add_edge(
start_key="call_tool",
end_key="basic_use_tool_response",
)
graph.add_edge(
start_key="basic_use_tool_response",
end_key=END,
)
return graph
def should_continue(state: BasicState) -> str:
return (
# If there are no tool calls, basic graph already streamed the answer
END
if state.tool_choice is None
else "call_tool"
)
if __name__ == "__main__":
from onyx.db.engine import get_session_context_manager
from onyx.context.search.models import SearchRequest
from onyx.llm.factory import get_default_llms
from onyx.agents.agent_search.shared_graph_utils.utils import get_test_config
graph = basic_graph_builder()
compiled_graph = graph.compile()
input = BasicInput(unused=True)
primary_llm, fast_llm = get_default_llms()
with get_session_context_manager() as db_session:
config, _ = get_test_config(
db_session=db_session,
primary_llm=primary_llm,
fast_llm=fast_llm,
search_request=SearchRequest(query="How does onyx use FastAPI?"),
)
compiled_graph.invoke(input, config={"metadata": {"config": config}})

View File

@@ -1,35 +0,0 @@
from typing import TypedDict
from langchain_core.messages import AIMessageChunk
from pydantic import BaseModel
from onyx.agents.agent_search.orchestration.states import ToolCallUpdate
from onyx.agents.agent_search.orchestration.states import ToolChoiceInput
from onyx.agents.agent_search.orchestration.states import ToolChoiceUpdate
# States contain values that change over the course of graph execution,
# Config is for values that are set at the start and never change.
# If you are using a value from the config and realize it needs to change,
# you should add it to the state and use/update the version in the state.
## Graph Input State
class BasicInput(BaseModel):
# Langgraph needs a nonempty input, but we pass in all static
# data through a RunnableConfig.
unused: bool = True
## Graph Output State
class BasicOutput(TypedDict):
tool_call_chunk: AIMessageChunk
## Graph State
class BasicState(
BasicInput,
ToolChoiceInput,
ToolCallUpdate,
ToolChoiceUpdate,
):
pass

View File

@@ -1,64 +0,0 @@
from collections.abc import Iterator
from typing import cast
from langchain_core.messages import AIMessageChunk
from langchain_core.messages import BaseMessage
from langgraph.types import StreamWriter
from onyx.agents.agent_search.shared_graph_utils.utils import write_custom_event
from onyx.chat.models import LlmDoc
from onyx.chat.models import OnyxContext
from onyx.chat.stream_processing.answer_response_handler import AnswerResponseHandler
from onyx.chat.stream_processing.answer_response_handler import CitationResponseHandler
from onyx.chat.stream_processing.answer_response_handler import (
PassThroughAnswerResponseHandler,
)
from onyx.chat.stream_processing.utils import map_document_id_order
from onyx.utils.logger import setup_logger
logger = setup_logger()
def process_llm_stream(
messages: Iterator[BaseMessage],
should_stream_answer: bool,
writer: StreamWriter,
final_search_results: list[LlmDoc] | None = None,
displayed_search_results: list[OnyxContext] | list[LlmDoc] | None = None,
) -> AIMessageChunk:
tool_call_chunk = AIMessageChunk(content="")
if final_search_results and displayed_search_results:
answer_handler: AnswerResponseHandler = CitationResponseHandler(
context_docs=final_search_results,
final_doc_id_to_rank_map=map_document_id_order(final_search_results),
display_doc_id_to_rank_map=map_document_id_order(displayed_search_results),
)
else:
answer_handler = PassThroughAnswerResponseHandler()
full_answer = ""
# This stream will be the llm answer if no tool is chosen. When a tool is chosen,
# the stream will contain AIMessageChunks with tool call information.
for message in messages:
answer_piece = message.content
if not isinstance(answer_piece, str):
# this is only used for logging, so fine to
# just add the string representation
answer_piece = str(answer_piece)
full_answer += answer_piece
if isinstance(message, AIMessageChunk) and (
message.tool_call_chunks or message.tool_calls
):
tool_call_chunk += message # type: ignore
elif should_stream_answer:
for response_part in answer_handler.handle_response_part(message, []):
write_custom_event(
"basic_response",
response_part,
writer,
)
logger.debug(f"Full answer: {full_answer}")
return cast(AIMessageChunk, tool_call_chunk)

View File

@@ -1,20 +0,0 @@
from operator import add
from typing import Annotated
from pydantic import BaseModel
class CoreState(BaseModel):
"""
This is the core state that is shared across all subgraphs.
"""
log_messages: Annotated[list[str], add] = []
class SubgraphCoreState(BaseModel):
"""
This is the core state that is shared across all subgraphs.
"""
log_messages: Annotated[list[str], add] = []

View File

@@ -1,31 +0,0 @@
from collections.abc import Hashable
from datetime import datetime
from langgraph.types import Send
from onyx.agents.agent_search.deep_search.initial.generate_individual_sub_answer.states import (
SubQuestionAnsweringInput,
)
from onyx.agents.agent_search.deep_search.shared.expanded_retrieval.states import (
ExpandedRetrievalInput,
)
from onyx.utils.logger import setup_logger
logger = setup_logger()
def send_to_expanded_retrieval(state: SubQuestionAnsweringInput) -> Send | Hashable:
"""
LangGraph edge to send a sub-question to the expanded retrieval.
"""
edge_start_time = datetime.now()
return Send(
"initial_sub_question_expanded_retrieval",
ExpandedRetrievalInput(
question=state.question,
base_search=False,
sub_question_id=state.question_id,
log_messages=[f"{edge_start_time} -- Sending to expanded retrieval"],
),
)

View File

@@ -1,137 +0,0 @@
from langgraph.graph import END
from langgraph.graph import START
from langgraph.graph import StateGraph
from onyx.agents.agent_search.deep_search.initial.generate_individual_sub_answer.edges import (
send_to_expanded_retrieval,
)
from onyx.agents.agent_search.deep_search.initial.generate_individual_sub_answer.nodes.check_sub_answer import (
check_sub_answer,
)
from onyx.agents.agent_search.deep_search.initial.generate_individual_sub_answer.nodes.format_sub_answer import (
format_sub_answer,
)
from onyx.agents.agent_search.deep_search.initial.generate_individual_sub_answer.nodes.generate_sub_answer import (
generate_sub_answer,
)
from onyx.agents.agent_search.deep_search.initial.generate_individual_sub_answer.nodes.ingest_retrieved_documents import (
ingest_retrieved_documents,
)
from onyx.agents.agent_search.deep_search.initial.generate_individual_sub_answer.states import (
AnswerQuestionOutput,
)
from onyx.agents.agent_search.deep_search.initial.generate_individual_sub_answer.states import (
AnswerQuestionState,
)
from onyx.agents.agent_search.deep_search.initial.generate_individual_sub_answer.states import (
SubQuestionAnsweringInput,
)
from onyx.agents.agent_search.deep_search.shared.expanded_retrieval.graph_builder import (
expanded_retrieval_graph_builder,
)
from onyx.agents.agent_search.shared_graph_utils.utils import get_test_config
from onyx.utils.logger import setup_logger
logger = setup_logger()
def answer_query_graph_builder() -> StateGraph:
"""
LangGraph sub-graph builder for the initial individual sub-answer generation.
"""
graph = StateGraph(
state_schema=AnswerQuestionState,
input=SubQuestionAnsweringInput,
output=AnswerQuestionOutput,
)
### Add nodes ###
# The sub-graph that executes the expanded retrieval process for a sub-question
expanded_retrieval = expanded_retrieval_graph_builder().compile()
graph.add_node(
node="initial_sub_question_expanded_retrieval",
action=expanded_retrieval,
)
# The node that ingests the retrieved documents and puts them into the proper
# state keys.
graph.add_node(
node="ingest_retrieval",
action=ingest_retrieved_documents,
)
# The node that generates the sub-answer
graph.add_node(
node="generate_sub_answer",
action=generate_sub_answer,
)
# The node that checks the sub-answer
graph.add_node(
node="answer_check",
action=check_sub_answer,
)
# The node that formats the sub-answer for the following initial answer generation
graph.add_node(
node="format_answer",
action=format_sub_answer,
)
### Add edges ###
graph.add_conditional_edges(
source=START,
path=send_to_expanded_retrieval,
path_map=["initial_sub_question_expanded_retrieval"],
)
graph.add_edge(
start_key="initial_sub_question_expanded_retrieval",
end_key="ingest_retrieval",
)
graph.add_edge(
start_key="ingest_retrieval",
end_key="generate_sub_answer",
)
graph.add_edge(
start_key="generate_sub_answer",
end_key="answer_check",
)
graph.add_edge(
start_key="answer_check",
end_key="format_answer",
)
graph.add_edge(
start_key="format_answer",
end_key=END,
)
return graph
if __name__ == "__main__":
from onyx.db.engine import get_session_context_manager
from onyx.llm.factory import get_default_llms
from onyx.context.search.models import SearchRequest
graph = answer_query_graph_builder()
compiled_graph = graph.compile()
primary_llm, fast_llm = get_default_llms()
search_request = SearchRequest(
query="what can you do with onyx or danswer?",
)
with get_session_context_manager() as db_session:
graph_config, search_tool = get_test_config(
db_session, primary_llm, fast_llm, search_request
)
inputs = SubQuestionAnsweringInput(
question="what can you do with onyx?",
question_id="0_0",
log_messages=[],
)
for thing in compiled_graph.stream(
input=inputs,
config={"configurable": {"config": graph_config}},
):
logger.debug(thing)

View File

@@ -1,134 +0,0 @@
from datetime import datetime
from typing import cast
from langchain_core.messages import BaseMessage
from langchain_core.messages import HumanMessage
from langchain_core.runnables.config import RunnableConfig
from onyx.agents.agent_search.deep_search.initial.generate_individual_sub_answer.states import (
AnswerQuestionState,
)
from onyx.agents.agent_search.deep_search.initial.generate_individual_sub_answer.states import (
SubQuestionAnswerCheckUpdate,
)
from onyx.agents.agent_search.models import GraphConfig
from onyx.agents.agent_search.shared_graph_utils.agent_prompt_ops import (
binary_string_test,
)
from onyx.agents.agent_search.shared_graph_utils.constants import (
AGENT_LLM_RATELIMIT_MESSAGE,
)
from onyx.agents.agent_search.shared_graph_utils.constants import (
AGENT_LLM_TIMEOUT_MESSAGE,
)
from onyx.agents.agent_search.shared_graph_utils.constants import (
AGENT_POSITIVE_VALUE_STR,
)
from onyx.agents.agent_search.shared_graph_utils.constants import AgentLLMErrorType
from onyx.agents.agent_search.shared_graph_utils.models import AgentErrorLog
from onyx.agents.agent_search.shared_graph_utils.models import LLMNodeErrorStrings
from onyx.agents.agent_search.shared_graph_utils.utils import (
get_langgraph_node_log_string,
)
from onyx.agents.agent_search.shared_graph_utils.utils import parse_question_id
from onyx.configs.agent_configs import AGENT_TIMEOUT_CONNECT_LLM_SUBANSWER_CHECK
from onyx.configs.agent_configs import AGENT_TIMEOUT_LLM_SUBANSWER_CHECK
from onyx.llm.chat_llm import LLMRateLimitError
from onyx.llm.chat_llm import LLMTimeoutError
from onyx.prompts.agent_search import SUB_ANSWER_CHECK_PROMPT
from onyx.prompts.agent_search import UNKNOWN_ANSWER
from onyx.utils.logger import setup_logger
from onyx.utils.threadpool_concurrency import run_with_timeout
from onyx.utils.timing import log_function_time
logger = setup_logger()
_llm_node_error_strings = LLMNodeErrorStrings(
timeout="LLM Timeout Error. The sub-answer will be treated as 'relevant'",
rate_limit="LLM Rate Limit Error. The sub-answer will be treated as 'relevant'",
general_error="General LLM Error. The sub-answer will be treated as 'relevant'",
)
@log_function_time(print_only=True)
def check_sub_answer(
state: AnswerQuestionState, config: RunnableConfig
) -> SubQuestionAnswerCheckUpdate:
"""
LangGraph node to check the quality of the sub-answer. The answer
is represented as a boolean value.
"""
node_start_time = datetime.now()
level, question_num = parse_question_id(state.question_id)
if state.answer == UNKNOWN_ANSWER:
return SubQuestionAnswerCheckUpdate(
answer_quality=False,
log_messages=[
get_langgraph_node_log_string(
graph_component="initial - generate individual sub answer",
node_name="check sub answer",
node_start_time=node_start_time,
result="unknown answer",
)
],
)
msg = [
HumanMessage(
content=SUB_ANSWER_CHECK_PROMPT.format(
question=state.question,
base_answer=state.answer,
)
)
]
graph_config = cast(GraphConfig, config["metadata"]["config"])
fast_llm = graph_config.tooling.fast_llm
agent_error: AgentErrorLog | None = None
response: BaseMessage | None = None
try:
response = run_with_timeout(
AGENT_TIMEOUT_LLM_SUBANSWER_CHECK,
fast_llm.invoke,
prompt=msg,
timeout_override=AGENT_TIMEOUT_CONNECT_LLM_SUBANSWER_CHECK,
)
quality_str: str = cast(str, response.content)
answer_quality = binary_string_test(
text=quality_str, positive_value=AGENT_POSITIVE_VALUE_STR
)
log_result = f"Answer quality: {quality_str}"
except (LLMTimeoutError, TimeoutError):
agent_error = AgentErrorLog(
error_type=AgentLLMErrorType.TIMEOUT,
error_message=AGENT_LLM_TIMEOUT_MESSAGE,
error_result=_llm_node_error_strings.timeout,
)
answer_quality = True
log_result = agent_error.error_result
logger.error("LLM Timeout Error - check sub answer")
except LLMRateLimitError:
agent_error = AgentErrorLog(
error_type=AgentLLMErrorType.RATE_LIMIT,
error_message=AGENT_LLM_RATELIMIT_MESSAGE,
error_result=_llm_node_error_strings.rate_limit,
)
answer_quality = True
log_result = agent_error.error_result
logger.error("LLM Rate Limit Error - check sub answer")
return SubQuestionAnswerCheckUpdate(
answer_quality=answer_quality,
log_messages=[
get_langgraph_node_log_string(
graph_component="initial - generate individual sub answer",
node_name="check sub answer",
node_start_time=node_start_time,
result=log_result,
)
],
)

View File

@@ -1,30 +0,0 @@
from onyx.agents.agent_search.deep_search.initial.generate_individual_sub_answer.states import (
AnswerQuestionOutput,
)
from onyx.agents.agent_search.deep_search.initial.generate_individual_sub_answer.states import (
AnswerQuestionState,
)
from onyx.agents.agent_search.shared_graph_utils.models import (
SubQuestionAnswerResults,
)
def format_sub_answer(state: AnswerQuestionState) -> AnswerQuestionOutput:
"""
LangGraph node to generate the sub-answer format.
"""
return AnswerQuestionOutput(
answer_results=[
SubQuestionAnswerResults(
question=state.question,
question_id=state.question_id,
verified_high_quality=state.answer_quality,
answer=state.answer,
sub_query_retrieval_results=state.expanded_retrieval_results,
verified_reranked_documents=state.verified_reranked_documents,
context_documents=state.context_documents,
cited_documents=state.cited_documents,
sub_question_retrieval_stats=state.sub_question_retrieval_stats,
)
],
)

View File

@@ -1,203 +0,0 @@
from datetime import datetime
from typing import cast
from langchain_core.messages import merge_message_runs
from langchain_core.runnables.config import RunnableConfig
from langgraph.types import StreamWriter
from onyx.agents.agent_search.deep_search.initial.generate_individual_sub_answer.states import (
AnswerQuestionState,
)
from onyx.agents.agent_search.deep_search.initial.generate_individual_sub_answer.states import (
SubQuestionAnswerGenerationUpdate,
)
from onyx.agents.agent_search.models import GraphConfig
from onyx.agents.agent_search.shared_graph_utils.agent_prompt_ops import (
build_sub_question_answer_prompt,
)
from onyx.agents.agent_search.shared_graph_utils.calculations import (
dedup_sort_inference_section_list,
)
from onyx.agents.agent_search.shared_graph_utils.constants import (
AGENT_LLM_RATELIMIT_MESSAGE,
)
from onyx.agents.agent_search.shared_graph_utils.constants import (
AGENT_LLM_TIMEOUT_MESSAGE,
)
from onyx.agents.agent_search.shared_graph_utils.constants import (
AgentLLMErrorType,
)
from onyx.agents.agent_search.shared_graph_utils.constants import (
LLM_ANSWER_ERROR_MESSAGE,
)
from onyx.agents.agent_search.shared_graph_utils.models import AgentErrorLog
from onyx.agents.agent_search.shared_graph_utils.models import LLMNodeErrorStrings
from onyx.agents.agent_search.shared_graph_utils.utils import get_answer_citation_ids
from onyx.agents.agent_search.shared_graph_utils.utils import (
get_langgraph_node_log_string,
)
from onyx.agents.agent_search.shared_graph_utils.utils import (
get_persona_agent_prompt_expressions,
)
from onyx.agents.agent_search.shared_graph_utils.utils import parse_question_id
from onyx.agents.agent_search.shared_graph_utils.utils import write_custom_event
from onyx.chat.models import AgentAnswerPiece
from onyx.chat.models import StreamStopInfo
from onyx.chat.models import StreamStopReason
from onyx.chat.models import StreamType
from onyx.configs.agent_configs import AGENT_MAX_ANSWER_CONTEXT_DOCS
from onyx.configs.agent_configs import AGENT_TIMEOUT_CONNECT_LLM_SUBANSWER_GENERATION
from onyx.configs.agent_configs import AGENT_TIMEOUT_LLM_SUBANSWER_GENERATION
from onyx.llm.chat_llm import LLMRateLimitError
from onyx.llm.chat_llm import LLMTimeoutError
from onyx.prompts.agent_search import NO_RECOVERED_DOCS
from onyx.utils.logger import setup_logger
from onyx.utils.threadpool_concurrency import run_with_timeout
from onyx.utils.timing import log_function_time
logger = setup_logger()
_llm_node_error_strings = LLMNodeErrorStrings(
timeout="LLM Timeout Error. A sub-answer could not be constructed and the sub-question will be ignored.",
rate_limit="LLM Rate Limit Error. A sub-answer could not be constructed and the sub-question will be ignored.",
general_error="General LLM Error. A sub-answer could not be constructed and the sub-question will be ignored.",
)
@log_function_time(print_only=True)
def generate_sub_answer(
state: AnswerQuestionState,
config: RunnableConfig,
writer: StreamWriter = lambda _: None,
) -> SubQuestionAnswerGenerationUpdate:
"""
LangGraph node to generate a sub-answer.
"""
node_start_time = datetime.now()
graph_config = cast(GraphConfig, config["metadata"]["config"])
question = state.question
state.verified_reranked_documents
level, question_num = parse_question_id(state.question_id)
context_docs = state.context_documents[:AGENT_MAX_ANSWER_CONTEXT_DOCS]
context_docs = dedup_sort_inference_section_list(context_docs)
persona_contextualized_prompt = get_persona_agent_prompt_expressions(
graph_config.inputs.search_request.persona
).contextualized_prompt
if len(context_docs) == 0:
answer_str = NO_RECOVERED_DOCS
cited_documents: list = []
log_results = "No documents retrieved"
write_custom_event(
"sub_answers",
AgentAnswerPiece(
answer_piece=answer_str,
level=level,
level_question_num=question_num,
answer_type="agent_sub_answer",
),
writer,
)
else:
fast_llm = graph_config.tooling.fast_llm
msg = build_sub_question_answer_prompt(
question=question,
original_question=graph_config.inputs.search_request.query,
docs=context_docs,
persona_specification=persona_contextualized_prompt,
config=fast_llm.config,
)
dispatch_timings: list[float] = []
agent_error: AgentErrorLog | None = None
response: list[str] = []
def stream_sub_answer() -> list[str]:
for message in fast_llm.stream(
prompt=msg,
timeout_override=AGENT_TIMEOUT_CONNECT_LLM_SUBANSWER_GENERATION,
):
# TODO: in principle, the answer here COULD contain images, but we don't support that yet
content = message.content
if not isinstance(content, str):
raise ValueError(
f"Expected content to be a string, but got {type(content)}"
)
start_stream_token = datetime.now()
write_custom_event(
"sub_answers",
AgentAnswerPiece(
answer_piece=content,
level=level,
level_question_num=question_num,
answer_type="agent_sub_answer",
),
writer,
)
end_stream_token = datetime.now()
dispatch_timings.append(
(end_stream_token - start_stream_token).microseconds
)
response.append(content)
return response
try:
response = run_with_timeout(
AGENT_TIMEOUT_LLM_SUBANSWER_GENERATION,
stream_sub_answer,
)
except (LLMTimeoutError, TimeoutError):
agent_error = AgentErrorLog(
error_type=AgentLLMErrorType.TIMEOUT,
error_message=AGENT_LLM_TIMEOUT_MESSAGE,
error_result=_llm_node_error_strings.timeout,
)
logger.error("LLM Timeout Error - generate sub answer")
except LLMRateLimitError:
agent_error = AgentErrorLog(
error_type=AgentLLMErrorType.RATE_LIMIT,
error_message=AGENT_LLM_RATELIMIT_MESSAGE,
error_result=_llm_node_error_strings.rate_limit,
)
logger.error("LLM Rate Limit Error - generate sub answer")
if agent_error:
answer_str = LLM_ANSWER_ERROR_MESSAGE
cited_documents = []
log_results = (
agent_error.error_result
or "Sub-answer generation failed due to LLM error"
)
else:
answer_str = merge_message_runs(response, chunk_separator="")[0].content
answer_citation_ids = get_answer_citation_ids(answer_str)
cited_documents = [
context_docs[id] for id in answer_citation_ids if id < len(context_docs)
]
log_results = None
stop_event = StreamStopInfo(
stop_reason=StreamStopReason.FINISHED,
stream_type=StreamType.SUB_ANSWER,
level=level,
level_question_num=question_num,
)
write_custom_event("stream_finished", stop_event, writer)
return SubQuestionAnswerGenerationUpdate(
answer=answer_str,
cited_documents=cited_documents,
log_messages=[
get_langgraph_node_log_string(
graph_component="initial - generate individual sub answer",
node_name="generate sub answer",
node_start_time=node_start_time,
result=log_results or "",
)
],
)

View File

@@ -1,25 +0,0 @@
from onyx.agents.agent_search.deep_search.initial.generate_individual_sub_answer.states import (
SubQuestionRetrievalIngestionUpdate,
)
from onyx.agents.agent_search.deep_search.shared.expanded_retrieval.states import (
ExpandedRetrievalOutput,
)
from onyx.agents.agent_search.shared_graph_utils.models import AgentChunkRetrievalStats
def ingest_retrieved_documents(
state: ExpandedRetrievalOutput,
) -> SubQuestionRetrievalIngestionUpdate:
"""
LangGraph node to ingest the retrieved documents to format it for the sub-answer.
"""
sub_question_retrieval_stats = state.expanded_retrieval_result.retrieval_stats
if sub_question_retrieval_stats is None:
sub_question_retrieval_stats = [AgentChunkRetrievalStats()]
return SubQuestionRetrievalIngestionUpdate(
expanded_retrieval_results=state.expanded_retrieval_result.expanded_query_results,
verified_reranked_documents=state.expanded_retrieval_result.verified_reranked_documents,
context_documents=state.expanded_retrieval_result.context_documents,
sub_question_retrieval_stats=sub_question_retrieval_stats,
)

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@@ -1,73 +0,0 @@
from operator import add
from typing import Annotated
from pydantic import BaseModel
from onyx.agents.agent_search.core_state import SubgraphCoreState
from onyx.agents.agent_search.deep_search.main.states import LoggerUpdate
from onyx.agents.agent_search.shared_graph_utils.models import AgentChunkRetrievalStats
from onyx.agents.agent_search.shared_graph_utils.models import QueryRetrievalResult
from onyx.agents.agent_search.shared_graph_utils.models import (
SubQuestionAnswerResults,
)
from onyx.agents.agent_search.shared_graph_utils.operators import (
dedup_inference_sections,
)
from onyx.context.search.models import InferenceSection
## Update States
class SubQuestionAnswerCheckUpdate(LoggerUpdate, BaseModel):
answer_quality: bool = False
log_messages: list[str] = []
class SubQuestionAnswerGenerationUpdate(LoggerUpdate, BaseModel):
answer: str = ""
log_messages: list[str] = []
cited_documents: Annotated[list[InferenceSection], dedup_inference_sections] = []
# answer_stat: AnswerStats
class SubQuestionRetrievalIngestionUpdate(LoggerUpdate, BaseModel):
expanded_retrieval_results: list[QueryRetrievalResult] = []
verified_reranked_documents: Annotated[
list[InferenceSection], dedup_inference_sections
] = []
context_documents: Annotated[list[InferenceSection], dedup_inference_sections] = []
sub_question_retrieval_stats: AgentChunkRetrievalStats = AgentChunkRetrievalStats()
## Graph Input State
class SubQuestionAnsweringInput(SubgraphCoreState):
question: str
question_id: str
# level 0 is original question and first decomposition, level 1 is follow up, etc
# question_num is a unique number per original question per level.
## Graph State
class AnswerQuestionState(
SubQuestionAnsweringInput,
SubQuestionAnswerGenerationUpdate,
SubQuestionAnswerCheckUpdate,
SubQuestionRetrievalIngestionUpdate,
):
pass
## Graph Output State
class AnswerQuestionOutput(LoggerUpdate, BaseModel):
"""
This is a list of results even though each call of this subgraph only returns one result.
This is because if we parallelize the answer query subgraph, there will be multiple
results in a list so the add operator is used to add them together.
"""
answer_results: Annotated[list[SubQuestionAnswerResults], add] = []

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@@ -1,50 +0,0 @@
from collections.abc import Hashable
from datetime import datetime
from langgraph.types import Send
from onyx.agents.agent_search.deep_search.initial.generate_individual_sub_answer.states import (
AnswerQuestionOutput,
)
from onyx.agents.agent_search.deep_search.initial.generate_individual_sub_answer.states import (
SubQuestionAnsweringInput,
)
from onyx.agents.agent_search.deep_search.initial.generate_initial_answer.states import (
SubQuestionRetrievalState,
)
from onyx.agents.agent_search.shared_graph_utils.utils import make_question_id
def parallelize_initial_sub_question_answering(
state: SubQuestionRetrievalState,
) -> list[Send | Hashable]:
"""
LangGraph edge to parallelize the initial sub-question answering. If there are no sub-questions,
we send empty answers to the initial answer generation, and that answer would be generated
solely based on the documents retrieved for the original question.
"""
edge_start_time = datetime.now()
if len(state.initial_sub_questions) > 0:
return [
Send(
"answer_query_subgraph",
SubQuestionAnsweringInput(
question=question,
question_id=make_question_id(0, question_num + 1),
log_messages=[
f"{edge_start_time} -- Main Edge - Parallelize Initial Sub-question Answering"
],
),
)
for question_num, question in enumerate(state.initial_sub_questions)
]
else:
return [
Send(
"ingest_answers",
AnswerQuestionOutput(
answer_results=[],
),
)
]

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@@ -1,96 +0,0 @@
from langgraph.graph import END
from langgraph.graph import START
from langgraph.graph import StateGraph
from onyx.agents.agent_search.deep_search.initial.generate_initial_answer.nodes.generate_initial_answer import (
generate_initial_answer,
)
from onyx.agents.agent_search.deep_search.initial.generate_initial_answer.nodes.validate_initial_answer import (
validate_initial_answer,
)
from onyx.agents.agent_search.deep_search.initial.generate_initial_answer.states import (
SubQuestionRetrievalInput,
)
from onyx.agents.agent_search.deep_search.initial.generate_initial_answer.states import (
SubQuestionRetrievalState,
)
from onyx.agents.agent_search.deep_search.initial.generate_sub_answers.graph_builder import (
generate_sub_answers_graph_builder,
)
from onyx.agents.agent_search.deep_search.initial.retrieve_orig_question_docs.graph_builder import (
retrieve_orig_question_docs_graph_builder,
)
from onyx.utils.logger import setup_logger
logger = setup_logger()
def generate_initial_answer_graph_builder(test_mode: bool = False) -> StateGraph:
"""
LangGraph graph builder for the initial answer generation.
"""
graph = StateGraph(
state_schema=SubQuestionRetrievalState,
input=SubQuestionRetrievalInput,
)
# The sub-graph that generates the initial sub-answers
generate_sub_answers = generate_sub_answers_graph_builder().compile()
graph.add_node(
node="generate_sub_answers_subgraph",
action=generate_sub_answers,
)
# The sub-graph that retrieves the original question documents. This is run
# in parallel with the sub-answer generation process
retrieve_orig_question_docs = retrieve_orig_question_docs_graph_builder().compile()
graph.add_node(
node="retrieve_orig_question_docs_subgraph_wrapper",
action=retrieve_orig_question_docs,
)
# Node that generates the initial answer using the results of the previous
# two sub-graphs
graph.add_node(
node="generate_initial_answer",
action=generate_initial_answer,
)
# Node that validates the initial answer
graph.add_node(
node="validate_initial_answer",
action=validate_initial_answer,
)
### Add edges ###
graph.add_edge(
start_key=START,
end_key="retrieve_orig_question_docs_subgraph_wrapper",
)
graph.add_edge(
start_key=START,
end_key="generate_sub_answers_subgraph",
)
# Wait for both, the original question docs and the sub-answers to be generated before proceeding
graph.add_edge(
start_key=[
"retrieve_orig_question_docs_subgraph_wrapper",
"generate_sub_answers_subgraph",
],
end_key="generate_initial_answer",
)
graph.add_edge(
start_key="generate_initial_answer",
end_key="validate_initial_answer",
)
graph.add_edge(
start_key="validate_initial_answer",
end_key=END,
)
return graph

View File

@@ -1,419 +0,0 @@
from datetime import datetime
from typing import cast
from langchain_core.messages import HumanMessage
from langchain_core.messages import merge_content
from langchain_core.runnables import RunnableConfig
from langgraph.types import StreamWriter
from onyx.agents.agent_search.deep_search.initial.generate_initial_answer.states import (
SubQuestionRetrievalState,
)
from onyx.agents.agent_search.deep_search.main.models import AgentBaseMetrics
from onyx.agents.agent_search.deep_search.main.operations import (
calculate_initial_agent_stats,
)
from onyx.agents.agent_search.deep_search.main.operations import get_query_info
from onyx.agents.agent_search.deep_search.main.operations import logger
from onyx.agents.agent_search.deep_search.main.states import (
InitialAnswerUpdate,
)
from onyx.agents.agent_search.models import GraphConfig
from onyx.agents.agent_search.shared_graph_utils.agent_prompt_ops import (
get_prompt_enrichment_components,
)
from onyx.agents.agent_search.shared_graph_utils.agent_prompt_ops import (
trim_prompt_piece,
)
from onyx.agents.agent_search.shared_graph_utils.calculations import (
get_answer_generation_documents,
)
from onyx.agents.agent_search.shared_graph_utils.constants import (
AGENT_LLM_RATELIMIT_MESSAGE,
)
from onyx.agents.agent_search.shared_graph_utils.constants import (
AGENT_LLM_TIMEOUT_MESSAGE,
)
from onyx.agents.agent_search.shared_graph_utils.constants import (
AgentLLMErrorType,
)
from onyx.agents.agent_search.shared_graph_utils.models import AgentErrorLog
from onyx.agents.agent_search.shared_graph_utils.models import InitialAgentResultStats
from onyx.agents.agent_search.shared_graph_utils.models import LLMNodeErrorStrings
from onyx.agents.agent_search.shared_graph_utils.operators import (
dedup_inference_section_list,
)
from onyx.agents.agent_search.shared_graph_utils.utils import (
dispatch_main_answer_stop_info,
)
from onyx.agents.agent_search.shared_graph_utils.utils import format_docs
from onyx.agents.agent_search.shared_graph_utils.utils import (
get_deduplicated_structured_subquestion_documents,
)
from onyx.agents.agent_search.shared_graph_utils.utils import (
get_langgraph_node_log_string,
)
from onyx.agents.agent_search.shared_graph_utils.utils import relevance_from_docs
from onyx.agents.agent_search.shared_graph_utils.utils import remove_document_citations
from onyx.agents.agent_search.shared_graph_utils.utils import write_custom_event
from onyx.chat.models import AgentAnswerPiece
from onyx.chat.models import ExtendedToolResponse
from onyx.chat.models import StreamingError
from onyx.configs.agent_configs import AGENT_ANSWER_GENERATION_BY_FAST_LLM
from onyx.configs.agent_configs import AGENT_MAX_ANSWER_CONTEXT_DOCS
from onyx.configs.agent_configs import AGENT_MAX_STREAMED_DOCS_FOR_INITIAL_ANSWER
from onyx.configs.agent_configs import AGENT_MIN_ORIG_QUESTION_DOCS
from onyx.configs.agent_configs import (
AGENT_TIMEOUT_CONNECT_LLM_INITIAL_ANSWER_GENERATION,
)
from onyx.configs.agent_configs import (
AGENT_TIMEOUT_LLM_INITIAL_ANSWER_GENERATION,
)
from onyx.llm.chat_llm import LLMRateLimitError
from onyx.llm.chat_llm import LLMTimeoutError
from onyx.prompts.agent_search import INITIAL_ANSWER_PROMPT_W_SUB_QUESTIONS
from onyx.prompts.agent_search import (
INITIAL_ANSWER_PROMPT_WO_SUB_QUESTIONS,
)
from onyx.prompts.agent_search import (
SUB_QUESTION_ANSWER_TEMPLATE,
)
from onyx.prompts.agent_search import UNKNOWN_ANSWER
from onyx.tools.tool_implementations.search.search_tool import yield_search_responses
from onyx.utils.threadpool_concurrency import run_with_timeout
from onyx.utils.timing import log_function_time
_llm_node_error_strings = LLMNodeErrorStrings(
timeout="LLM Timeout Error. The initial answer could not be generated.",
rate_limit="LLM Rate Limit Error. The initial answer could not be generated.",
general_error="General LLM Error. The initial answer could not be generated.",
)
@log_function_time(print_only=True)
def generate_initial_answer(
state: SubQuestionRetrievalState,
config: RunnableConfig,
writer: StreamWriter = lambda _: None,
) -> InitialAnswerUpdate:
"""
LangGraph node to generate the initial answer, using the initial sub-questions/sub-answers and the
documents retrieved for the original question.
"""
node_start_time = datetime.now()
graph_config = cast(GraphConfig, config["metadata"]["config"])
question = graph_config.inputs.search_request.query
prompt_enrichment_components = get_prompt_enrichment_components(graph_config)
# get all documents cited in sub-questions
structured_subquestion_docs = get_deduplicated_structured_subquestion_documents(
state.sub_question_results
)
orig_question_retrieval_documents = state.orig_question_retrieved_documents
consolidated_context_docs = structured_subquestion_docs.cited_documents
counter = 0
for original_doc_number, original_doc in enumerate(
orig_question_retrieval_documents
):
if original_doc_number not in structured_subquestion_docs.cited_documents:
if (
counter <= AGENT_MIN_ORIG_QUESTION_DOCS
or len(consolidated_context_docs) < AGENT_MAX_ANSWER_CONTEXT_DOCS
):
consolidated_context_docs.append(original_doc)
counter += 1
# sort docs by their scores - though the scores refer to different questions
relevant_docs = dedup_inference_section_list(consolidated_context_docs)
sub_questions: list[str] = []
# Create the list of documents to stream out. Start with the
# ones that wil be in the context (or, if len == 0, use docs
# that were retrieved for the original question)
answer_generation_documents = get_answer_generation_documents(
relevant_docs=relevant_docs,
context_documents=structured_subquestion_docs.context_documents,
original_question_docs=orig_question_retrieval_documents,
max_docs=AGENT_MAX_STREAMED_DOCS_FOR_INITIAL_ANSWER,
)
# Use the query info from the base document retrieval
query_info = get_query_info(state.orig_question_sub_query_retrieval_results)
assert (
graph_config.tooling.search_tool
), "search_tool must be provided for agentic search"
relevance_list = relevance_from_docs(
answer_generation_documents.streaming_documents
)
for tool_response in yield_search_responses(
query=question,
reranked_sections=answer_generation_documents.streaming_documents,
final_context_sections=answer_generation_documents.context_documents,
search_query_info=query_info,
get_section_relevance=lambda: relevance_list,
search_tool=graph_config.tooling.search_tool,
):
write_custom_event(
"tool_response",
ExtendedToolResponse(
id=tool_response.id,
response=tool_response.response,
level=0,
level_question_num=0, # 0, 0 is the base question
),
writer,
)
if len(answer_generation_documents.context_documents) == 0:
write_custom_event(
"initial_agent_answer",
AgentAnswerPiece(
answer_piece=UNKNOWN_ANSWER,
level=0,
level_question_num=0,
answer_type="agent_level_answer",
),
writer,
)
dispatch_main_answer_stop_info(0, writer)
answer = UNKNOWN_ANSWER
initial_agent_stats = InitialAgentResultStats(
sub_questions={},
original_question={},
agent_effectiveness={},
)
else:
sub_question_answer_results = state.sub_question_results
# Collect the sub-questions and sub-answers and construct an appropriate
# prompt string.
# Consider replacing by a function.
answered_sub_questions: list[str] = []
all_sub_questions: list[str] = [] # Separate list for tracking all questions
for idx, sub_question_answer_result in enumerate(
sub_question_answer_results, start=1
):
all_sub_questions.append(sub_question_answer_result.question)
is_valid_answer = (
sub_question_answer_result.verified_high_quality
and sub_question_answer_result.answer
and sub_question_answer_result.answer != UNKNOWN_ANSWER
)
if is_valid_answer:
answered_sub_questions.append(
SUB_QUESTION_ANSWER_TEMPLATE.format(
sub_question=sub_question_answer_result.question,
sub_answer=sub_question_answer_result.answer,
sub_question_num=idx,
)
)
sub_question_answer_str = (
"\n\n------\n\n".join(answered_sub_questions)
if answered_sub_questions
else ""
)
# Use the appropriate prompt based on whether there are sub-questions.
base_prompt = (
INITIAL_ANSWER_PROMPT_W_SUB_QUESTIONS
if answered_sub_questions
else INITIAL_ANSWER_PROMPT_WO_SUB_QUESTIONS
)
sub_questions = all_sub_questions # Replace the original assignment
model = (
graph_config.tooling.fast_llm
if AGENT_ANSWER_GENERATION_BY_FAST_LLM
else graph_config.tooling.primary_llm
)
doc_context = format_docs(answer_generation_documents.context_documents)
doc_context = trim_prompt_piece(
config=model.config,
prompt_piece=doc_context,
reserved_str=(
base_prompt
+ sub_question_answer_str
+ prompt_enrichment_components.persona_prompts.contextualized_prompt
+ prompt_enrichment_components.history
+ prompt_enrichment_components.date_str
),
)
msg = [
HumanMessage(
content=base_prompt.format(
question=question,
answered_sub_questions=remove_document_citations(
sub_question_answer_str
),
relevant_docs=doc_context,
persona_specification=prompt_enrichment_components.persona_prompts.contextualized_prompt,
history=prompt_enrichment_components.history,
date_prompt=prompt_enrichment_components.date_str,
)
)
]
streamed_tokens: list[str] = [""]
dispatch_timings: list[float] = []
agent_error: AgentErrorLog | None = None
def stream_initial_answer() -> list[str]:
response: list[str] = []
for message in model.stream(
msg,
timeout_override=AGENT_TIMEOUT_CONNECT_LLM_INITIAL_ANSWER_GENERATION,
):
# TODO: in principle, the answer here COULD contain images, but we don't support that yet
content = message.content
if not isinstance(content, str):
raise ValueError(
f"Expected content to be a string, but got {type(content)}"
)
start_stream_token = datetime.now()
write_custom_event(
"initial_agent_answer",
AgentAnswerPiece(
answer_piece=content,
level=0,
level_question_num=0,
answer_type="agent_level_answer",
),
writer,
)
end_stream_token = datetime.now()
dispatch_timings.append(
(end_stream_token - start_stream_token).microseconds
)
response.append(content)
return response
try:
streamed_tokens = run_with_timeout(
AGENT_TIMEOUT_LLM_INITIAL_ANSWER_GENERATION,
stream_initial_answer,
)
except (LLMTimeoutError, TimeoutError):
agent_error = AgentErrorLog(
error_type=AgentLLMErrorType.TIMEOUT,
error_message=AGENT_LLM_TIMEOUT_MESSAGE,
error_result=_llm_node_error_strings.timeout,
)
logger.error("LLM Timeout Error - generate initial answer")
except LLMRateLimitError:
agent_error = AgentErrorLog(
error_type=AgentLLMErrorType.RATE_LIMIT,
error_message=AGENT_LLM_RATELIMIT_MESSAGE,
error_result=_llm_node_error_strings.rate_limit,
)
logger.error("LLM Rate Limit Error - generate initial answer")
if agent_error:
write_custom_event(
"initial_agent_answer",
StreamingError(
error=AGENT_LLM_TIMEOUT_MESSAGE,
),
writer,
)
return InitialAnswerUpdate(
initial_answer=None,
answer_error=AgentErrorLog(
error_message=agent_error.error_message or "An LLM error occurred",
error_type=agent_error.error_type,
error_result=agent_error.error_result,
),
initial_agent_stats=None,
generated_sub_questions=sub_questions,
agent_base_end_time=None,
agent_base_metrics=None,
log_messages=[
get_langgraph_node_log_string(
graph_component="initial - generate initial answer",
node_name="generate initial answer",
node_start_time=node_start_time,
result=agent_error.error_result or "An LLM error occurred",
)
],
)
logger.debug(
f"Average dispatch time for initial answer: {sum(dispatch_timings) / len(dispatch_timings)}"
)
dispatch_main_answer_stop_info(0, writer)
response = merge_content(*streamed_tokens)
answer = cast(str, response)
initial_agent_stats = calculate_initial_agent_stats(
state.sub_question_results, state.orig_question_retrieval_stats
)
logger.debug(
f"\n\nYYYYY--Sub-Questions:\n\n{sub_question_answer_str}\n\nStats:\n\n"
)
if initial_agent_stats:
logger.debug(initial_agent_stats.original_question)
logger.debug(initial_agent_stats.sub_questions)
logger.debug(initial_agent_stats.agent_effectiveness)
agent_base_end_time = datetime.now()
if agent_base_end_time and state.agent_start_time:
duration_s = (agent_base_end_time - state.agent_start_time).total_seconds()
else:
duration_s = None
agent_base_metrics = AgentBaseMetrics(
num_verified_documents_total=len(relevant_docs),
num_verified_documents_core=state.orig_question_retrieval_stats.verified_count,
verified_avg_score_core=state.orig_question_retrieval_stats.verified_avg_scores,
num_verified_documents_base=initial_agent_stats.sub_questions.get(
"num_verified_documents"
),
verified_avg_score_base=initial_agent_stats.sub_questions.get(
"verified_avg_score"
),
base_doc_boost_factor=initial_agent_stats.agent_effectiveness.get(
"utilized_chunk_ratio"
),
support_boost_factor=initial_agent_stats.agent_effectiveness.get(
"support_ratio"
),
duration_s=duration_s,
)
return InitialAnswerUpdate(
initial_answer=answer,
initial_agent_stats=initial_agent_stats,
generated_sub_questions=sub_questions,
agent_base_end_time=agent_base_end_time,
agent_base_metrics=agent_base_metrics,
log_messages=[
get_langgraph_node_log_string(
graph_component="initial - generate initial answer",
node_name="generate initial answer",
node_start_time=node_start_time,
result="",
)
],
)

View File

@@ -1,42 +0,0 @@
from datetime import datetime
from onyx.agents.agent_search.deep_search.initial.generate_initial_answer.states import (
SubQuestionRetrievalState,
)
from onyx.agents.agent_search.deep_search.main.operations import logger
from onyx.agents.agent_search.deep_search.main.states import (
InitialAnswerQualityUpdate,
)
from onyx.agents.agent_search.shared_graph_utils.utils import (
get_langgraph_node_log_string,
)
from onyx.utils.timing import log_function_time
@log_function_time(print_only=True)
def validate_initial_answer(
state: SubQuestionRetrievalState,
) -> InitialAnswerQualityUpdate:
"""
Check whether the initial answer sufficiently addresses the original user question.
"""
node_start_time = datetime.now()
logger.debug(
f"--------{node_start_time}--------Checking for base answer validity - for not set True/False manually"
)
verdict = True # not actually required as already streamed out. Refinement will do similar
return InitialAnswerQualityUpdate(
initial_answer_quality_eval=verdict,
log_messages=[
get_langgraph_node_log_string(
graph_component="initial - generate initial answer",
node_name="validate initial answer",
node_start_time=node_start_time,
result="",
)
],
)

View File

@@ -1,51 +0,0 @@
from operator import add
from typing import Annotated
from typing import TypedDict
from onyx.agents.agent_search.core_state import CoreState
from onyx.agents.agent_search.deep_search.main.states import (
ExploratorySearchUpdate,
)
from onyx.agents.agent_search.deep_search.main.states import (
InitialAnswerQualityUpdate,
)
from onyx.agents.agent_search.deep_search.main.states import (
InitialAnswerUpdate,
)
from onyx.agents.agent_search.deep_search.main.states import (
InitialQuestionDecompositionUpdate,
)
from onyx.agents.agent_search.deep_search.main.states import (
OrigQuestionRetrievalUpdate,
)
from onyx.agents.agent_search.deep_search.main.states import (
SubQuestionResultsUpdate,
)
from onyx.agents.agent_search.deep_search.shared.expanded_retrieval.models import (
QuestionRetrievalResult,
)
from onyx.context.search.models import InferenceSection
### States ###
class SubQuestionRetrievalInput(CoreState):
exploratory_search_results: list[InferenceSection]
## Graph State
class SubQuestionRetrievalState(
# This includes the core state
SubQuestionRetrievalInput,
InitialQuestionDecompositionUpdate,
InitialAnswerUpdate,
SubQuestionResultsUpdate,
OrigQuestionRetrievalUpdate,
InitialAnswerQualityUpdate,
ExploratorySearchUpdate,
):
base_raw_search_result: Annotated[list[QuestionRetrievalResult], add]
## Graph Output State
class SubQuestionRetrievalOutput(TypedDict):
log_messages: list[str]

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@@ -1,48 +0,0 @@
from collections.abc import Hashable
from datetime import datetime
from langgraph.types import Send
from onyx.agents.agent_search.deep_search.initial.generate_individual_sub_answer.states import (
AnswerQuestionOutput,
)
from onyx.agents.agent_search.deep_search.initial.generate_individual_sub_answer.states import (
SubQuestionAnsweringInput,
)
from onyx.agents.agent_search.deep_search.initial.generate_initial_answer.states import (
SubQuestionRetrievalState,
)
from onyx.agents.agent_search.shared_graph_utils.utils import make_question_id
def parallelize_initial_sub_question_answering(
state: SubQuestionRetrievalState,
) -> list[Send | Hashable]:
"""
LangGraph edge to parallelize the initial sub-question answering.
"""
edge_start_time = datetime.now()
if len(state.initial_sub_questions) > 0:
return [
Send(
"answer_sub_question_subgraphs",
SubQuestionAnsweringInput(
question=question,
question_id=make_question_id(0, question_num + 1),
log_messages=[
f"{edge_start_time} -- Main Edge - Parallelize Initial Sub-question Answering"
],
),
)
for question_num, question in enumerate(state.initial_sub_questions)
]
else:
return [
Send(
"ingest_answers",
AnswerQuestionOutput(
answer_results=[],
),
)
]

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@@ -1,81 +0,0 @@
from langgraph.graph import END
from langgraph.graph import START
from langgraph.graph import StateGraph
from onyx.agents.agent_search.deep_search.initial.generate_individual_sub_answer.graph_builder import (
answer_query_graph_builder,
)
from onyx.agents.agent_search.deep_search.initial.generate_sub_answers.edges import (
parallelize_initial_sub_question_answering,
)
from onyx.agents.agent_search.deep_search.initial.generate_sub_answers.nodes.decompose_orig_question import (
decompose_orig_question,
)
from onyx.agents.agent_search.deep_search.initial.generate_sub_answers.nodes.format_initial_sub_answers import (
format_initial_sub_answers,
)
from onyx.agents.agent_search.deep_search.initial.generate_sub_answers.states import (
SubQuestionAnsweringInput,
)
from onyx.agents.agent_search.deep_search.initial.generate_sub_answers.states import (
SubQuestionAnsweringState,
)
from onyx.utils.logger import setup_logger
logger = setup_logger()
test_mode = False
def generate_sub_answers_graph_builder() -> StateGraph:
"""
LangGraph graph builder for the initial sub-answer generation process.
It generates the initial sub-questions and produces the answers.
"""
graph = StateGraph(
state_schema=SubQuestionAnsweringState,
input=SubQuestionAnsweringInput,
)
# Decompose the original question into sub-questions
graph.add_node(
node="decompose_orig_question",
action=decompose_orig_question,
)
# The sub-graph that executes the initial sub-question answering for
# each of the sub-questions.
answer_sub_question_subgraphs = answer_query_graph_builder().compile()
graph.add_node(
node="answer_sub_question_subgraphs",
action=answer_sub_question_subgraphs,
)
# Node that collects and formats the initial sub-question answers
graph.add_node(
node="format_initial_sub_question_answers",
action=format_initial_sub_answers,
)
graph.add_edge(
start_key=START,
end_key="decompose_orig_question",
)
graph.add_conditional_edges(
source="decompose_orig_question",
path=parallelize_initial_sub_question_answering,
path_map=["answer_sub_question_subgraphs"],
)
graph.add_edge(
start_key=["answer_sub_question_subgraphs"],
end_key="format_initial_sub_question_answers",
)
graph.add_edge(
start_key="format_initial_sub_question_answers",
end_key=END,
)
return graph

View File

@@ -1,188 +0,0 @@
from datetime import datetime
from typing import cast
from langchain_core.messages import HumanMessage
from langchain_core.messages import merge_content
from langchain_core.runnables import RunnableConfig
from langgraph.types import StreamWriter
from onyx.agents.agent_search.deep_search.initial.generate_initial_answer.states import (
SubQuestionRetrievalState,
)
from onyx.agents.agent_search.deep_search.main.models import (
AgentRefinedMetrics,
)
from onyx.agents.agent_search.deep_search.main.operations import dispatch_subquestion
from onyx.agents.agent_search.deep_search.main.operations import (
dispatch_subquestion_sep,
)
from onyx.agents.agent_search.deep_search.main.states import (
InitialQuestionDecompositionUpdate,
)
from onyx.agents.agent_search.models import GraphConfig
from onyx.agents.agent_search.shared_graph_utils.agent_prompt_ops import (
build_history_prompt,
)
from onyx.agents.agent_search.shared_graph_utils.models import BaseMessage_Content
from onyx.agents.agent_search.shared_graph_utils.models import LLMNodeErrorStrings
from onyx.agents.agent_search.shared_graph_utils.utils import dispatch_separated
from onyx.agents.agent_search.shared_graph_utils.utils import (
get_langgraph_node_log_string,
)
from onyx.agents.agent_search.shared_graph_utils.utils import write_custom_event
from onyx.chat.models import StreamStopInfo
from onyx.chat.models import StreamStopReason
from onyx.chat.models import StreamType
from onyx.chat.models import SubQuestionPiece
from onyx.configs.agent_configs import AGENT_NUM_DOCS_FOR_DECOMPOSITION
from onyx.configs.agent_configs import (
AGENT_TIMEOUT_CONNECT_LLM_SUBQUESTION_GENERATION,
)
from onyx.configs.agent_configs import (
AGENT_TIMEOUT_LLM_SUBQUESTION_GENERATION,
)
from onyx.llm.chat_llm import LLMRateLimitError
from onyx.llm.chat_llm import LLMTimeoutError
from onyx.prompts.agent_search import (
INITIAL_DECOMPOSITION_PROMPT_QUESTIONS_AFTER_SEARCH_ASSUMING_REFINEMENT,
)
from onyx.prompts.agent_search import (
INITIAL_QUESTION_DECOMPOSITION_PROMPT_ASSUMING_REFINEMENT,
)
from onyx.utils.logger import setup_logger
from onyx.utils.threadpool_concurrency import run_with_timeout
from onyx.utils.timing import log_function_time
logger = setup_logger()
_llm_node_error_strings = LLMNodeErrorStrings(
timeout="LLM Timeout Error. Sub-questions could not be generated.",
rate_limit="LLM Rate Limit Error. Sub-questions could not be generated.",
general_error="General LLM Error. Sub-questions could not be generated.",
)
@log_function_time(print_only=True)
def decompose_orig_question(
state: SubQuestionRetrievalState,
config: RunnableConfig,
writer: StreamWriter = lambda _: None,
) -> InitialQuestionDecompositionUpdate:
"""
LangGraph node to decompose the original question into sub-questions.
"""
node_start_time = datetime.now()
graph_config = cast(GraphConfig, config["metadata"]["config"])
question = graph_config.inputs.search_request.query
perform_initial_search_decomposition = (
graph_config.behavior.perform_initial_search_decomposition
)
# Get the rewritten queries in a defined format
model = graph_config.tooling.fast_llm
history = build_history_prompt(graph_config, question)
# Use the initial search results to inform the decomposition
agent_start_time = datetime.now()
# Initial search to inform decomposition. Just get top 3 fits
if perform_initial_search_decomposition:
# Due to unfortunate state representation in LangGraph, we need here to double check that the retrieval has
# happened prior to this point, allowing silent failure here since it is not critical for decomposition in
# all queries.
if not state.exploratory_search_results:
logger.error("Initial search for decomposition failed")
sample_doc_str = "\n\n".join(
[
doc.combined_content
for doc in state.exploratory_search_results[
:AGENT_NUM_DOCS_FOR_DECOMPOSITION
]
]
)
decomposition_prompt = INITIAL_DECOMPOSITION_PROMPT_QUESTIONS_AFTER_SEARCH_ASSUMING_REFINEMENT.format(
question=question, sample_doc_str=sample_doc_str, history=history
)
else:
decomposition_prompt = (
INITIAL_QUESTION_DECOMPOSITION_PROMPT_ASSUMING_REFINEMENT.format(
question=question, history=history
)
)
# Start decomposition
msg = [HumanMessage(content=decomposition_prompt)]
# Send the initial question as a subquestion with number 0
write_custom_event(
"decomp_qs",
SubQuestionPiece(
sub_question=question,
level=0,
level_question_num=0,
),
writer,
)
# dispatches custom events for subquestion tokens, adding in subquestion ids.
streamed_tokens: list[BaseMessage_Content] = []
try:
streamed_tokens = run_with_timeout(
AGENT_TIMEOUT_LLM_SUBQUESTION_GENERATION,
dispatch_separated,
model.stream(
msg,
timeout_override=AGENT_TIMEOUT_CONNECT_LLM_SUBQUESTION_GENERATION,
),
dispatch_subquestion(0, writer),
sep_callback=dispatch_subquestion_sep(0, writer),
)
decomposition_response = merge_content(*streamed_tokens)
list_of_subqs = cast(str, decomposition_response).split("\n")
initial_sub_questions = [sq.strip() for sq in list_of_subqs if sq.strip() != ""]
log_result = f"decomposed original question into {len(initial_sub_questions)} subquestions"
stop_event = StreamStopInfo(
stop_reason=StreamStopReason.FINISHED,
stream_type=StreamType.SUB_QUESTIONS,
level=0,
)
write_custom_event("stream_finished", stop_event, writer)
except (LLMTimeoutError, TimeoutError) as e:
logger.error("LLM Timeout Error - decompose orig question")
raise e # fail loudly on this critical step
except LLMRateLimitError as e:
logger.error("LLM Rate Limit Error - decompose orig question")
raise e
return InitialQuestionDecompositionUpdate(
initial_sub_questions=initial_sub_questions,
agent_start_time=agent_start_time,
agent_refined_start_time=None,
agent_refined_end_time=None,
agent_refined_metrics=AgentRefinedMetrics(
refined_doc_boost_factor=None,
refined_question_boost_factor=None,
duration_s=None,
),
log_messages=[
get_langgraph_node_log_string(
graph_component="initial - generate sub answers",
node_name="decompose original question",
node_start_time=node_start_time,
result=log_result,
)
],
)

View File

@@ -1,50 +0,0 @@
from datetime import datetime
from onyx.agents.agent_search.deep_search.initial.generate_individual_sub_answer.states import (
AnswerQuestionOutput,
)
from onyx.agents.agent_search.deep_search.main.states import (
SubQuestionResultsUpdate,
)
from onyx.agents.agent_search.shared_graph_utils.operators import (
dedup_inference_sections,
)
from onyx.agents.agent_search.shared_graph_utils.utils import (
get_langgraph_node_log_string,
)
def format_initial_sub_answers(
state: AnswerQuestionOutput,
) -> SubQuestionResultsUpdate:
"""
LangGraph node to format the answers to the initial sub-questions, including
deduping verified documents and context documents.
"""
node_start_time = datetime.now()
documents = []
context_documents = []
cited_documents = []
answer_results = state.answer_results
for answer_result in answer_results:
documents.extend(answer_result.verified_reranked_documents)
context_documents.extend(answer_result.context_documents)
cited_documents.extend(answer_result.cited_documents)
return SubQuestionResultsUpdate(
# Deduping is done by the documents operator for the main graph
# so we might not need to dedup here
verified_reranked_documents=dedup_inference_sections(documents, []),
context_documents=dedup_inference_sections(context_documents, []),
cited_documents=dedup_inference_sections(cited_documents, []),
sub_question_results=answer_results,
log_messages=[
get_langgraph_node_log_string(
graph_component="initial - generate sub answers",
node_name="format initial sub answers",
node_start_time=node_start_time,
result="",
)
],
)

View File

@@ -1,34 +0,0 @@
from typing import TypedDict
from onyx.agents.agent_search.core_state import CoreState
from onyx.agents.agent_search.deep_search.main.states import (
InitialAnswerUpdate,
)
from onyx.agents.agent_search.deep_search.main.states import (
InitialQuestionDecompositionUpdate,
)
from onyx.agents.agent_search.deep_search.main.states import (
SubQuestionResultsUpdate,
)
from onyx.context.search.models import InferenceSection
### States ###
class SubQuestionAnsweringInput(CoreState):
exploratory_search_results: list[InferenceSection]
## Graph State
class SubQuestionAnsweringState(
# This includes the core state
SubQuestionAnsweringInput,
InitialQuestionDecompositionUpdate,
InitialAnswerUpdate,
SubQuestionResultsUpdate,
):
pass
## Graph Output State
class SubQuestionAnsweringOutput(TypedDict):
log_messages: list[str]

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@@ -1,81 +0,0 @@
from langgraph.graph import END
from langgraph.graph import START
from langgraph.graph import StateGraph
from onyx.agents.agent_search.deep_search.initial.retrieve_orig_question_docs.nodes.format_orig_question_search_input import (
format_orig_question_search_input,
)
from onyx.agents.agent_search.deep_search.initial.retrieve_orig_question_docs.nodes.format_orig_question_search_output import (
format_orig_question_search_output,
)
from onyx.agents.agent_search.deep_search.initial.retrieve_orig_question_docs.states import (
BaseRawSearchInput,
)
from onyx.agents.agent_search.deep_search.initial.retrieve_orig_question_docs.states import (
BaseRawSearchOutput,
)
from onyx.agents.agent_search.deep_search.initial.retrieve_orig_question_docs.states import (
BaseRawSearchState,
)
from onyx.agents.agent_search.deep_search.shared.expanded_retrieval.graph_builder import (
expanded_retrieval_graph_builder,
)
def retrieve_orig_question_docs_graph_builder() -> StateGraph:
"""
LangGraph graph builder for the retrieval of documents
that are relevant to the original question. This is
largely a wrapper around the expanded retrieval process to
ensure parallelism with the sub-question answer process.
"""
graph = StateGraph(
state_schema=BaseRawSearchState,
input=BaseRawSearchInput,
output=BaseRawSearchOutput,
)
### Add nodes ###
# Format the original question search output
graph.add_node(
node="format_orig_question_search_output",
action=format_orig_question_search_output,
)
# The sub-graph that executes the expanded retrieval process
expanded_retrieval = expanded_retrieval_graph_builder().compile()
graph.add_node(
node="retrieve_orig_question_docs_subgraph",
action=expanded_retrieval,
)
# Format the original question search input
graph.add_node(
node="format_orig_question_search_input",
action=format_orig_question_search_input,
)
### Add edges ###
graph.add_edge(start_key=START, end_key="format_orig_question_search_input")
graph.add_edge(
start_key="format_orig_question_search_input",
end_key="retrieve_orig_question_docs_subgraph",
)
graph.add_edge(
start_key="retrieve_orig_question_docs_subgraph",
end_key="format_orig_question_search_output",
)
graph.add_edge(
start_key="format_orig_question_search_output",
end_key=END,
)
return graph
if __name__ == "__main__":
pass

View File

@@ -1,28 +0,0 @@
from typing import cast
from langchain_core.runnables.config import RunnableConfig
from onyx.agents.agent_search.core_state import CoreState
from onyx.agents.agent_search.deep_search.shared.expanded_retrieval.states import (
ExpandedRetrievalInput,
)
from onyx.agents.agent_search.models import GraphConfig
from onyx.utils.logger import setup_logger
logger = setup_logger()
def format_orig_question_search_input(
state: CoreState, config: RunnableConfig
) -> ExpandedRetrievalInput:
"""
LangGraph node to format the search input for the original question.
"""
logger.debug("generate_raw_search_data")
graph_config = cast(GraphConfig, config["metadata"]["config"])
return ExpandedRetrievalInput(
question=graph_config.inputs.search_request.query,
base_search=True,
sub_question_id=None, # This graph is always and only used for the original question
log_messages=[],
)

View File

@@ -1,30 +0,0 @@
from onyx.agents.agent_search.deep_search.main.states import OrigQuestionRetrievalUpdate
from onyx.agents.agent_search.deep_search.shared.expanded_retrieval.states import (
ExpandedRetrievalOutput,
)
from onyx.agents.agent_search.shared_graph_utils.models import AgentChunkRetrievalStats
from onyx.utils.logger import setup_logger
logger = setup_logger()
def format_orig_question_search_output(
state: ExpandedRetrievalOutput,
) -> OrigQuestionRetrievalUpdate:
"""
LangGraph node to format the search result for the original question into the
proper format.
"""
sub_question_retrieval_stats = state.expanded_retrieval_result.retrieval_stats
if sub_question_retrieval_stats is None:
sub_question_retrieval_stats = AgentChunkRetrievalStats()
else:
sub_question_retrieval_stats = sub_question_retrieval_stats
return OrigQuestionRetrievalUpdate(
orig_question_verified_reranked_documents=state.expanded_retrieval_result.verified_reranked_documents,
orig_question_sub_query_retrieval_results=state.expanded_retrieval_result.expanded_query_results,
orig_question_retrieved_documents=state.retrieved_documents,
orig_question_retrieval_stats=sub_question_retrieval_stats,
log_messages=[],
)

View File

@@ -1,29 +0,0 @@
from onyx.agents.agent_search.deep_search.main.states import (
OrigQuestionRetrievalUpdate,
)
from onyx.agents.agent_search.deep_search.shared.expanded_retrieval.states import (
ExpandedRetrievalInput,
)
## Graph Input State
class BaseRawSearchInput(ExpandedRetrievalInput):
pass
## Graph Output State
class BaseRawSearchOutput(OrigQuestionRetrievalUpdate):
"""
This is a list of results even though each call of this subgraph only returns one result.
This is because if we parallelize the answer query subgraph, there will be multiple
results in a list so the add operator is used to add them together.
"""
# base_expanded_retrieval_result: QuestionRetrievalResult = QuestionRetrievalResult()
## Graph State
class BaseRawSearchState(
BaseRawSearchInput, BaseRawSearchOutput, OrigQuestionRetrievalUpdate
):
pass

View File

@@ -1,113 +0,0 @@
from collections.abc import Hashable
from datetime import datetime
from typing import cast
from typing import Literal
from langchain_core.runnables import RunnableConfig
from langgraph.types import Send
from onyx.agents.agent_search.deep_search.initial.generate_individual_sub_answer.states import (
AnswerQuestionOutput,
)
from onyx.agents.agent_search.deep_search.initial.generate_individual_sub_answer.states import (
SubQuestionAnsweringInput,
)
from onyx.agents.agent_search.deep_search.main.states import MainState
from onyx.agents.agent_search.deep_search.main.states import (
RequireRefinemenEvalUpdate,
)
from onyx.agents.agent_search.models import GraphConfig
from onyx.agents.agent_search.shared_graph_utils.utils import make_question_id
from onyx.utils.logger import setup_logger
logger = setup_logger()
def route_initial_tool_choice(
state: MainState, config: RunnableConfig
) -> Literal["call_tool", "start_agent_search", "logging_node"]:
"""
LangGraph edge to route to agent search.
"""
agent_config = cast(GraphConfig, config["metadata"]["config"])
if state.tool_choice is not None:
if (
agent_config.behavior.use_agentic_search
and agent_config.tooling.search_tool is not None
and state.tool_choice.tool.name == agent_config.tooling.search_tool.name
):
return "start_agent_search"
else:
return "call_tool"
else:
return "logging_node"
def parallelize_initial_sub_question_answering(
state: MainState,
) -> list[Send | Hashable]:
edge_start_time = datetime.now()
if len(state.initial_sub_questions) > 0:
return [
Send(
"answer_query_subgraph",
SubQuestionAnsweringInput(
question=question,
question_id=make_question_id(0, question_num + 1),
log_messages=[
f"{edge_start_time} -- Main Edge - Parallelize Initial Sub-question Answering"
],
),
)
for question_num, question in enumerate(state.initial_sub_questions)
]
else:
return [
Send(
"ingest_answers",
AnswerQuestionOutput(
answer_results=[],
),
)
]
# Define the function that determines whether to continue or not
def continue_to_refined_answer_or_end(
state: RequireRefinemenEvalUpdate,
) -> Literal["create_refined_sub_questions", "logging_node"]:
if state.require_refined_answer_eval:
return "create_refined_sub_questions"
else:
return "logging_node"
def parallelize_refined_sub_question_answering(
state: MainState,
) -> list[Send | Hashable]:
edge_start_time = datetime.now()
if len(state.refined_sub_questions) > 0:
return [
Send(
"answer_refined_question_subgraphs",
SubQuestionAnsweringInput(
question=question_data.sub_question,
question_id=make_question_id(1, question_num),
log_messages=[
f"{edge_start_time} -- Main Edge - Parallelize Refined Sub-question Answering"
],
),
)
for question_num, question_data in state.refined_sub_questions.items()
]
else:
return [
Send(
"ingest_refined_sub_answers",
AnswerQuestionOutput(
answer_results=[],
),
)
]

View File

@@ -1,263 +0,0 @@
from langgraph.graph import END
from langgraph.graph import START
from langgraph.graph import StateGraph
from onyx.agents.agent_search.deep_search.initial.generate_initial_answer.graph_builder import (
generate_initial_answer_graph_builder,
)
from onyx.agents.agent_search.deep_search.main.edges import (
continue_to_refined_answer_or_end,
)
from onyx.agents.agent_search.deep_search.main.edges import (
parallelize_refined_sub_question_answering,
)
from onyx.agents.agent_search.deep_search.main.edges import (
route_initial_tool_choice,
)
from onyx.agents.agent_search.deep_search.main.nodes.compare_answers import (
compare_answers,
)
from onyx.agents.agent_search.deep_search.main.nodes.create_refined_sub_questions import (
create_refined_sub_questions,
)
from onyx.agents.agent_search.deep_search.main.nodes.decide_refinement_need import (
decide_refinement_need,
)
from onyx.agents.agent_search.deep_search.main.nodes.extract_entities_terms import (
extract_entities_terms,
)
from onyx.agents.agent_search.deep_search.main.nodes.generate_validate_refined_answer import (
generate_validate_refined_answer,
)
from onyx.agents.agent_search.deep_search.main.nodes.ingest_refined_sub_answers import (
ingest_refined_sub_answers,
)
from onyx.agents.agent_search.deep_search.main.nodes.persist_agent_results import (
persist_agent_results,
)
from onyx.agents.agent_search.deep_search.main.nodes.start_agent_search import (
start_agent_search,
)
from onyx.agents.agent_search.deep_search.main.states import MainInput
from onyx.agents.agent_search.deep_search.main.states import MainState
from onyx.agents.agent_search.deep_search.refinement.consolidate_sub_answers.graph_builder import (
answer_refined_query_graph_builder,
)
from onyx.agents.agent_search.orchestration.nodes.call_tool import call_tool
from onyx.agents.agent_search.orchestration.nodes.choose_tool import choose_tool
from onyx.agents.agent_search.orchestration.nodes.prepare_tool_input import (
prepare_tool_input,
)
from onyx.agents.agent_search.orchestration.nodes.use_tool_response import (
basic_use_tool_response,
)
from onyx.agents.agent_search.shared_graph_utils.utils import get_test_config
from onyx.utils.logger import setup_logger
logger = setup_logger()
test_mode = False
def main_graph_builder(test_mode: bool = False) -> StateGraph:
"""
LangGraph graph builder for the main agent search process.
"""
graph = StateGraph(
state_schema=MainState,
input=MainInput,
)
# Prepare the tool input
graph.add_node(
node="prepare_tool_input",
action=prepare_tool_input,
)
# Choose the initial tool
graph.add_node(
node="initial_tool_choice",
action=choose_tool,
)
# Call the tool, if required
graph.add_node(
node="call_tool",
action=call_tool,
)
# Use the tool response
graph.add_node(
node="basic_use_tool_response",
action=basic_use_tool_response,
)
# Start the agent search process
graph.add_node(
node="start_agent_search",
action=start_agent_search,
)
# The sub-graph for the initial answer generation
generate_initial_answer_subgraph = generate_initial_answer_graph_builder().compile()
graph.add_node(
node="generate_initial_answer_subgraph",
action=generate_initial_answer_subgraph,
)
# Create the refined sub-questions
graph.add_node(
node="create_refined_sub_questions",
action=create_refined_sub_questions,
)
# Subgraph for the refined sub-answer generation
answer_refined_question = answer_refined_query_graph_builder().compile()
graph.add_node(
node="answer_refined_question_subgraphs",
action=answer_refined_question,
)
# Ingest the refined sub-answers
graph.add_node(
node="ingest_refined_sub_answers",
action=ingest_refined_sub_answers,
)
# Node to generate the refined answer
graph.add_node(
node="generate_validate_refined_answer",
action=generate_validate_refined_answer,
)
# Early node to extract the entities and terms from the initial answer,
# This information is used to inform the creation the refined sub-questions
graph.add_node(
node="extract_entity_term",
action=extract_entities_terms,
)
# Decide if the answer needs to be refined (currently always true)
graph.add_node(
node="decide_refinement_need",
action=decide_refinement_need,
)
# Compare the initial and refined answers, and determine whether
# the refined answer is sufficiently better
graph.add_node(
node="compare_answers",
action=compare_answers,
)
# Log the results. This will log the stats as well as the answers, sub-questions, and sub-answers
graph.add_node(
node="logging_node",
action=persist_agent_results,
)
### Add edges ###
graph.add_edge(start_key=START, end_key="prepare_tool_input")
graph.add_edge(
start_key="prepare_tool_input",
end_key="initial_tool_choice",
)
graph.add_conditional_edges(
"initial_tool_choice",
route_initial_tool_choice,
["call_tool", "start_agent_search", "logging_node"],
)
graph.add_edge(
start_key="call_tool",
end_key="basic_use_tool_response",
)
graph.add_edge(
start_key="basic_use_tool_response",
end_key="logging_node",
)
graph.add_edge(
start_key="start_agent_search",
end_key="generate_initial_answer_subgraph",
)
graph.add_edge(
start_key="start_agent_search",
end_key="extract_entity_term",
)
# Wait for the initial answer generation and the entity/term extraction to be complete
# before deciding if a refinement is needed.
graph.add_edge(
start_key=["generate_initial_answer_subgraph", "extract_entity_term"],
end_key="decide_refinement_need",
)
graph.add_conditional_edges(
source="decide_refinement_need",
path=continue_to_refined_answer_or_end,
path_map=["create_refined_sub_questions", "logging_node"],
)
graph.add_conditional_edges(
source="create_refined_sub_questions",
path=parallelize_refined_sub_question_answering,
path_map=["answer_refined_question_subgraphs"],
)
graph.add_edge(
start_key="answer_refined_question_subgraphs",
end_key="ingest_refined_sub_answers",
)
graph.add_edge(
start_key="ingest_refined_sub_answers",
end_key="generate_validate_refined_answer",
)
graph.add_edge(
start_key="generate_validate_refined_answer",
end_key="compare_answers",
)
graph.add_edge(
start_key="compare_answers",
end_key="logging_node",
)
graph.add_edge(
start_key="logging_node",
end_key=END,
)
return graph
if __name__ == "__main__":
pass
from onyx.db.engine import get_session_context_manager
from onyx.llm.factory import get_default_llms
from onyx.context.search.models import SearchRequest
graph = main_graph_builder()
compiled_graph = graph.compile()
primary_llm, fast_llm = get_default_llms()
with get_session_context_manager() as db_session:
search_request = SearchRequest(query="Who created Excel?")
graph_config = get_test_config(
db_session, primary_llm, fast_llm, search_request
)
inputs = MainInput(log_messages=[])
for thing in compiled_graph.stream(
input=inputs,
config={"configurable": {"config": graph_config}},
stream_mode="custom",
subgraphs=True,
):
logger.debug(thing)

View File

@@ -1,36 +0,0 @@
from pydantic import BaseModel
class RefinementSubQuestion(BaseModel):
sub_question: str
sub_question_id: str
verified: bool
answered: bool
answer: str
class AgentTimings(BaseModel):
base_duration_s: float | None
refined_duration_s: float | None
full_duration_s: float | None
class AgentBaseMetrics(BaseModel):
num_verified_documents_total: int | None
num_verified_documents_core: int | None
verified_avg_score_core: float | None
num_verified_documents_base: int | float | None
verified_avg_score_base: float | None = None
base_doc_boost_factor: float | None = None
support_boost_factor: float | None = None
duration_s: float | None = None
class AgentRefinedMetrics(BaseModel):
refined_doc_boost_factor: float | None = None
refined_question_boost_factor: float | None = None
duration_s: float | None = None
class AgentAdditionalMetrics(BaseModel):
pass

View File

@@ -1,166 +0,0 @@
from datetime import datetime
from typing import cast
from langchain_core.messages import BaseMessage
from langchain_core.messages import HumanMessage
from langchain_core.runnables import RunnableConfig
from langgraph.types import StreamWriter
from onyx.agents.agent_search.deep_search.main.states import (
InitialRefinedAnswerComparisonUpdate,
)
from onyx.agents.agent_search.deep_search.main.states import MainState
from onyx.agents.agent_search.models import GraphConfig
from onyx.agents.agent_search.shared_graph_utils.agent_prompt_ops import (
binary_string_test,
)
from onyx.agents.agent_search.shared_graph_utils.constants import (
AGENT_LLM_RATELIMIT_MESSAGE,
)
from onyx.agents.agent_search.shared_graph_utils.constants import (
AGENT_LLM_TIMEOUT_MESSAGE,
)
from onyx.agents.agent_search.shared_graph_utils.constants import (
AGENT_POSITIVE_VALUE_STR,
)
from onyx.agents.agent_search.shared_graph_utils.constants import (
AgentLLMErrorType,
)
from onyx.agents.agent_search.shared_graph_utils.models import AgentErrorLog
from onyx.agents.agent_search.shared_graph_utils.models import LLMNodeErrorStrings
from onyx.agents.agent_search.shared_graph_utils.utils import (
get_langgraph_node_log_string,
)
from onyx.agents.agent_search.shared_graph_utils.utils import write_custom_event
from onyx.chat.models import RefinedAnswerImprovement
from onyx.configs.agent_configs import AGENT_TIMEOUT_CONNECT_LLM_COMPARE_ANSWERS
from onyx.configs.agent_configs import AGENT_TIMEOUT_LLM_COMPARE_ANSWERS
from onyx.llm.chat_llm import LLMRateLimitError
from onyx.llm.chat_llm import LLMTimeoutError
from onyx.prompts.agent_search import (
INITIAL_REFINED_ANSWER_COMPARISON_PROMPT,
)
from onyx.utils.logger import setup_logger
from onyx.utils.threadpool_concurrency import run_with_timeout
from onyx.utils.timing import log_function_time
logger = setup_logger()
_llm_node_error_strings = LLMNodeErrorStrings(
timeout="The LLM timed out, and the answers could not be compared.",
rate_limit="The LLM encountered a rate limit, and the answers could not be compared.",
general_error="The LLM encountered an error, and the answers could not be compared.",
)
_ANSWER_QUALITY_NOT_SUFFICIENT_MESSAGE = (
"Answer quality is not sufficient, so stay with the initial answer."
)
@log_function_time(print_only=True)
def compare_answers(
state: MainState, config: RunnableConfig, writer: StreamWriter = lambda _: None
) -> InitialRefinedAnswerComparisonUpdate:
"""
LangGraph node to compare the initial answer and the refined answer and determine if the
refined answer is sufficiently better than the initial answer.
"""
node_start_time = datetime.now()
graph_config = cast(GraphConfig, config["metadata"]["config"])
question = graph_config.inputs.search_request.query
initial_answer = state.initial_answer
refined_answer = state.refined_answer
# if answer quality is not sufficient, then stay with the initial answer
if not state.refined_answer_quality:
write_custom_event(
"refined_answer_improvement",
RefinedAnswerImprovement(
refined_answer_improvement=False,
),
writer,
)
return InitialRefinedAnswerComparisonUpdate(
refined_answer_improvement_eval=False,
log_messages=[
get_langgraph_node_log_string(
graph_component="main",
node_name="compare answers",
node_start_time=node_start_time,
result=_ANSWER_QUALITY_NOT_SUFFICIENT_MESSAGE,
)
],
)
compare_answers_prompt = INITIAL_REFINED_ANSWER_COMPARISON_PROMPT.format(
question=question, initial_answer=initial_answer, refined_answer=refined_answer
)
msg = [HumanMessage(content=compare_answers_prompt)]
agent_error: AgentErrorLog | None = None
# Get the rewritten queries in a defined format
model = graph_config.tooling.fast_llm
resp: BaseMessage | None = None
refined_answer_improvement: bool | None = None
# no need to stream this
try:
resp = run_with_timeout(
AGENT_TIMEOUT_LLM_COMPARE_ANSWERS,
model.invoke,
prompt=msg,
timeout_override=AGENT_TIMEOUT_CONNECT_LLM_COMPARE_ANSWERS,
)
except (LLMTimeoutError, TimeoutError):
agent_error = AgentErrorLog(
error_type=AgentLLMErrorType.TIMEOUT,
error_message=AGENT_LLM_TIMEOUT_MESSAGE,
error_result=_llm_node_error_strings.timeout,
)
logger.error("LLM Timeout Error - compare answers")
# continue as True in this support step
except LLMRateLimitError:
agent_error = AgentErrorLog(
error_type=AgentLLMErrorType.RATE_LIMIT,
error_message=AGENT_LLM_RATELIMIT_MESSAGE,
error_result=_llm_node_error_strings.rate_limit,
)
logger.error("LLM Rate Limit Error - compare answers")
# continue as True in this support step
if agent_error or resp is None:
refined_answer_improvement = True
if agent_error:
log_result = agent_error.error_result
else:
log_result = "An answer could not be generated."
else:
refined_answer_improvement = binary_string_test(
text=cast(str, resp.content),
positive_value=AGENT_POSITIVE_VALUE_STR,
)
log_result = f"Answer comparison: {refined_answer_improvement}"
write_custom_event(
"refined_answer_improvement",
RefinedAnswerImprovement(
refined_answer_improvement=refined_answer_improvement,
),
writer,
)
return InitialRefinedAnswerComparisonUpdate(
refined_answer_improvement_eval=refined_answer_improvement,
log_messages=[
get_langgraph_node_log_string(
graph_component="main",
node_name="compare answers",
node_start_time=node_start_time,
result=log_result,
)
],
)

View File

@@ -1,211 +0,0 @@
from datetime import datetime
from typing import cast
from langchain_core.messages import HumanMessage
from langchain_core.messages import merge_content
from langchain_core.runnables import RunnableConfig
from langgraph.types import StreamWriter
from onyx.agents.agent_search.deep_search.main.models import (
RefinementSubQuestion,
)
from onyx.agents.agent_search.deep_search.main.operations import dispatch_subquestion
from onyx.agents.agent_search.deep_search.main.operations import (
dispatch_subquestion_sep,
)
from onyx.agents.agent_search.deep_search.main.states import MainState
from onyx.agents.agent_search.deep_search.main.states import (
RefinedQuestionDecompositionUpdate,
)
from onyx.agents.agent_search.models import GraphConfig
from onyx.agents.agent_search.shared_graph_utils.agent_prompt_ops import (
build_history_prompt,
)
from onyx.agents.agent_search.shared_graph_utils.constants import (
AGENT_LLM_RATELIMIT_MESSAGE,
)
from onyx.agents.agent_search.shared_graph_utils.constants import (
AGENT_LLM_TIMEOUT_MESSAGE,
)
from onyx.agents.agent_search.shared_graph_utils.constants import (
AgentLLMErrorType,
)
from onyx.agents.agent_search.shared_graph_utils.models import AgentErrorLog
from onyx.agents.agent_search.shared_graph_utils.models import BaseMessage_Content
from onyx.agents.agent_search.shared_graph_utils.models import LLMNodeErrorStrings
from onyx.agents.agent_search.shared_graph_utils.utils import dispatch_separated
from onyx.agents.agent_search.shared_graph_utils.utils import (
format_entity_term_extraction,
)
from onyx.agents.agent_search.shared_graph_utils.utils import (
get_langgraph_node_log_string,
)
from onyx.agents.agent_search.shared_graph_utils.utils import make_question_id
from onyx.agents.agent_search.shared_graph_utils.utils import write_custom_event
from onyx.chat.models import StreamingError
from onyx.configs.agent_configs import (
AGENT_TIMEOUT_CONNECT_LLM_REFINED_SUBQUESTION_GENERATION,
)
from onyx.configs.agent_configs import (
AGENT_TIMEOUT_LLM_REFINED_SUBQUESTION_GENERATION,
)
from onyx.llm.chat_llm import LLMRateLimitError
from onyx.llm.chat_llm import LLMTimeoutError
from onyx.prompts.agent_search import (
REFINEMENT_QUESTION_DECOMPOSITION_PROMPT_W_INITIAL_SUBQUESTION_ANSWERS,
)
from onyx.tools.models import ToolCallKickoff
from onyx.utils.logger import setup_logger
from onyx.utils.threadpool_concurrency import run_with_timeout
from onyx.utils.timing import log_function_time
logger = setup_logger()
_ANSWERED_SUBQUESTIONS_DIVIDER = "\n\n---\n\n"
_llm_node_error_strings = LLMNodeErrorStrings(
timeout="The LLM timed out. The sub-questions could not be generated.",
rate_limit="The LLM encountered a rate limit. The sub-questions could not be generated.",
general_error="The LLM encountered an error. The sub-questions could not be generated.",
)
@log_function_time(print_only=True)
def create_refined_sub_questions(
state: MainState, config: RunnableConfig, writer: StreamWriter = lambda _: None
) -> RefinedQuestionDecompositionUpdate:
"""
LangGraph node to create refined sub-questions based on the initial answer, the history,
the entity term extraction results found earlier, and the sub-questions that were answered and failed.
"""
graph_config = cast(GraphConfig, config["metadata"]["config"])
write_custom_event(
"start_refined_answer_creation",
ToolCallKickoff(
tool_name="agent_search_1",
tool_args={
"query": graph_config.inputs.search_request.query,
"answer": state.initial_answer,
},
),
writer,
)
node_start_time = datetime.now()
agent_refined_start_time = datetime.now()
question = graph_config.inputs.search_request.query
base_answer = state.initial_answer
history = build_history_prompt(graph_config, question)
# get the entity term extraction dict and properly format it
entity_retlation_term_extractions = state.entity_relation_term_extractions
entity_term_extraction_str = format_entity_term_extraction(
entity_retlation_term_extractions
)
initial_question_answers = state.sub_question_results
addressed_subquestions_with_answers = [
f"Subquestion: {x.question}\nSubanswer:\n{x.answer}"
for x in initial_question_answers
if x.verified_high_quality and x.answer
]
failed_question_list = [
x.question for x in initial_question_answers if not x.verified_high_quality
]
msg = [
HumanMessage(
content=REFINEMENT_QUESTION_DECOMPOSITION_PROMPT_W_INITIAL_SUBQUESTION_ANSWERS.format(
question=question,
history=history,
entity_term_extraction_str=entity_term_extraction_str,
base_answer=base_answer,
answered_subquestions_with_answers=_ANSWERED_SUBQUESTIONS_DIVIDER.join(
addressed_subquestions_with_answers
),
failed_sub_questions="\n - ".join(failed_question_list),
),
)
]
# Grader
model = graph_config.tooling.fast_llm
agent_error: AgentErrorLog | None = None
streamed_tokens: list[BaseMessage_Content] = []
try:
streamed_tokens = run_with_timeout(
AGENT_TIMEOUT_LLM_REFINED_SUBQUESTION_GENERATION,
dispatch_separated,
model.stream(
msg,
timeout_override=AGENT_TIMEOUT_CONNECT_LLM_REFINED_SUBQUESTION_GENERATION,
),
dispatch_subquestion(1, writer),
sep_callback=dispatch_subquestion_sep(1, writer),
)
except (LLMTimeoutError, TimeoutError):
agent_error = AgentErrorLog(
error_type=AgentLLMErrorType.TIMEOUT,
error_message=AGENT_LLM_TIMEOUT_MESSAGE,
error_result=_llm_node_error_strings.timeout,
)
logger.error("LLM Timeout Error - create refined sub questions")
except LLMRateLimitError:
agent_error = AgentErrorLog(
error_type=AgentLLMErrorType.RATE_LIMIT,
error_message=AGENT_LLM_RATELIMIT_MESSAGE,
error_result=_llm_node_error_strings.rate_limit,
)
logger.error("LLM Rate Limit Error - create refined sub questions")
if agent_error:
refined_sub_question_dict: dict[int, RefinementSubQuestion] = {}
log_result = agent_error.error_result
write_custom_event(
"refined_sub_question_creation_error",
StreamingError(
error="Your LLM was not able to create refined sub questions in time and timed out. Please try again.",
),
writer,
)
else:
response = merge_content(*streamed_tokens)
if isinstance(response, str):
parsed_response = [q for q in response.split("\n") if q.strip() != ""]
else:
raise ValueError("LLM response is not a string")
refined_sub_question_dict = {}
for sub_question_num, sub_question in enumerate(parsed_response):
refined_sub_question = RefinementSubQuestion(
sub_question=sub_question,
sub_question_id=make_question_id(1, sub_question_num + 1),
verified=False,
answered=False,
answer="",
)
refined_sub_question_dict[sub_question_num + 1] = refined_sub_question
log_result = f"Created {len(refined_sub_question_dict)} refined sub questions"
return RefinedQuestionDecompositionUpdate(
refined_sub_questions=refined_sub_question_dict,
agent_refined_start_time=agent_refined_start_time,
log_messages=[
get_langgraph_node_log_string(
graph_component="main",
node_name="create refined sub questions",
node_start_time=node_start_time,
result=log_result,
)
],
)

View File

@@ -1,62 +0,0 @@
from datetime import datetime
from typing import cast
from langchain_core.runnables import RunnableConfig
from onyx.agents.agent_search.deep_search.main.states import MainState
from onyx.agents.agent_search.deep_search.main.states import (
RequireRefinemenEvalUpdate,
)
from onyx.agents.agent_search.models import GraphConfig
from onyx.agents.agent_search.shared_graph_utils.utils import (
get_langgraph_node_log_string,
)
from onyx.utils.timing import log_function_time
@log_function_time(print_only=True)
def decide_refinement_need(
state: MainState, config: RunnableConfig
) -> RequireRefinemenEvalUpdate:
"""
LangGraph node to decide if refinement is needed based on the initial answer and the question.
At present, we always refine.
"""
node_start_time = datetime.now()
graph_config = cast(GraphConfig, config["metadata"]["config"])
decision = True # TODO: just for current testing purposes
if state.answer_error:
return RequireRefinemenEvalUpdate(
require_refined_answer_eval=False,
log_messages=[
get_langgraph_node_log_string(
graph_component="main",
node_name="decide refinement need",
node_start_time=node_start_time,
result="Timeout Error",
)
],
)
log_messages = [
get_langgraph_node_log_string(
graph_component="main",
node_name="decide refinement need",
node_start_time=node_start_time,
result=f"Refinement decision: {decision}",
)
]
if graph_config.behavior.allow_refinement:
return RequireRefinemenEvalUpdate(
require_refined_answer_eval=decision,
log_messages=log_messages,
)
else:
return RequireRefinemenEvalUpdate(
require_refined_answer_eval=False,
log_messages=log_messages,
)

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